from __future__ import annotations

import collections
import contextlib
import dataclasses
import enum
import functools
import importlib
import inspect
import io
import itertools
import logging
import math
import operator
import os
import platform
import re
import shutil
import statistics
import sys
import sysconfig
import tempfile
import textwrap
import time
import unittest
from collections.abc import (
    Callable,
    Collection,
    Generator,
    Iterator,
    Mapping,
    MutableMapping,
    MutableSet,
)
from datetime import datetime
from io import StringIO
from typing import (
    Any,
    cast,
    Concatenate,
    Generic,
    Literal,
    NamedTuple,
    Optional,
    Protocol,
    TYPE_CHECKING,
    TypeAlias,
    TypeGuard,
    TypeVar,
    Union,
)
from typing_extensions import dataclass_transform, ParamSpec, Self
from unittest import mock

import sympy

import torch
import torch.utils._pytree as pytree
from torch._inductor.analysis.device_info import datasheet_tops
from torch._inductor.runtime.hints import DeviceProperties
from torch.fx.passes.regional_inductor import _needs_inductor_compile
from torch.utils._dtype_abbrs import dtype_abbrs
from torch.utils._ordered_set import OrderedSet
from torch.utils._pytree import tree_flatten, tree_map_only


if TYPE_CHECKING:
    from pathlib import Path

OPTIMUS_EXCLUDE_POST_GRAD = [
    "activation_quantization_aten_pass",
    "inductor_autotune_lookup_table",
]

from torch.fx.experimental.symbolic_shapes import (
    free_symbols,
    free_unbacked_symbols,
    IterateExprs,
    ShapeEnv,
)


if TYPE_CHECKING:
    from collections.abc import Iterable, Sequence, ValuesView

    from torch import SymBool, SymFloat, SymInt
    from torch._prims_common import ELEMENTWISE_TYPE_PROMOTION_KIND
    from torch.fx import GraphModule
    from torch.fx.node import Node

    from .codegen.common import WorkspaceArg
    from .codegen.wrapper import PythonWrapperCodegen
    from .dependencies import Dep
    from .graph import GraphLowering
    from .ir import Buffer, ExternKernel, IRNode, Layout, Operation, ReinterpretView
    from .output_code import CompiledFxGraph
    from .scheduler import BaseSchedulerNode, SchedulerBuffer


GPU_TYPES = ["cuda", "mps", "xpu", "mtia"]
T = TypeVar("T")


# defines here before import torch._dynamo is for avoiding circular import
# when get_gpu_type is imported from dynamo
@functools.cache
def get_gpu_type() -> str:
    avail_gpus = [x for x in GPU_TYPES if getattr(torch, x).is_available()]
    assert len(avail_gpus) <= 1
    gpu_type = "cuda" if len(avail_gpus) == 0 else avail_gpus.pop()
    return gpu_type


from torch._dynamo.device_interface import get_interface_for_device
from torch._dynamo.utils import detect_fake_mode
from torch.autograd import DeviceType
from torch.autograd.profiler_util import EventList
from torch.fx.passes.graph_transform_observer import GraphTransformObserver
from torch.fx.passes.shape_prop import ShapeProp
from torch.utils._sympy.functions import (
    CeilDiv,
    CleanDiv,
    FloorDiv,
    Identity,
    ModularIndexing,
)
from torch.utils._sympy.symbol import make_symbol, SymT
from torch.utils._sympy.value_ranges import bound_sympy, ValueRanges

from . import config
from .runtime.runtime_utils import ceildiv as runtime_ceildiv


_IS_WINDOWS = sys.platform == "win32"

log = logging.getLogger(__name__)
perf_hint_log = torch._logging.getArtifactLogger(__name__, "perf_hints")


_T = TypeVar("_T")
VarRanges = dict[sympy.Expr, sympy.Expr]
InputType = Optional[Union[torch.Tensor, int, torch.SymInt]]

GPU_KERNEL_BIN_EXTS = {"cuda": ".cubin", "xpu": ".spv"}

GPU_ALIGN_BYTES = 16
ALIGNMENT = 16

TMA_ALIGNMENT = 16
TMA_DESCRIPTOR_SIZE = 128

ALIGN_BYTES = 64
assert (ALIGN_BYTES & (ALIGN_BYTES - 1)) == 0 and ALIGN_BYTES >= 8, "must be power of 2"


def _align(nbytes: int) -> int:
    """Round up to the nearest multiple of ALIGN_BYTES"""
    return (nbytes + ALIGN_BYTES - 1) & -ALIGN_BYTES


def _is_aligned(v: sympy.Expr) -> bool:
    """v can be statically proven to be a multiple of ALIGN_BYTES"""
    if isinstance(v, (sympy.Add, sympy.Max)):
        return all(map(_is_aligned, v.args))
    return isinstance(v, align) or sympy.gcd(v, ALIGN_BYTES) == ALIGN_BYTES


class align(sympy.Function):
    """Symbolically round up to the nearest multiple of ALIGN_BYTES"""

    nargs = (1,)
    is_integer = True

    @classmethod
    def eval(cls, value: sympy.Expr) -> Optional[sympy.Expr]:
        if isinstance(value, (int, sympy.Integer)):
            return _align(int(value))
        if _is_aligned(value):
            return value


@dataclasses.dataclass(frozen=True)
class GraphPartitionMap:
    """
    Mapping from the partition info (e.g., input/output) to the graph info
    """

    # a unique id of graph partition
    id: int

    # map partition input/output indices to graph input/output indices. None indicates
    # a partition input/output is not a graph input/output.
    input_index_mapping: list[Optional[int]]
    output_index_mapping: list[Optional[int]]

    # name of constants read/written by the graph partition
    constant_names: list[str]


def fp8_bench(fn: Callable[[], Any], warmup: int = 25, rep: int = 100) -> float:
    """
    Returns benchmark results by examining torch profiler events.
    This could be more accurate as it doesn't count CPU side overhead.
    However, this also requires manually excluding irrelevant event, e.g.
    vectorized_elementwise_kernel which is used to fill L2 cache,
    various CUDA events, etc, so could also be fragile.
    """

    fn()
    torch.cuda.synchronize()
    cache = torch.empty(int(256e6 // 4), dtype=torch.float16, device="cuda")

    # Estimate the runtime of the function
    start_event = torch.cuda.Event(enable_timing=True)
    end_event = torch.cuda.Event(enable_timing=True)
    start_event.record()
    for _ in range(5):
        cache.zero_()
        fn()
    end_event.record()
    torch.cuda.synchronize()
    estimate_ms = start_event.elapsed_time(end_event) / 5

    # compute number of warmup and repeat
    n_warmup = max(1, int(warmup / estimate_ms))
    n_repeat = max(1, int(rep / estimate_ms))

    # Warm-up
    for _ in range(n_warmup):
        fn()

    start_event = [torch.cuda.Event(enable_timing=True) for _ in range(n_repeat)]
    end_event = [torch.cuda.Event(enable_timing=True) for _ in range(n_repeat)]
    with torch.profiler.profile(
        activities=[
            torch.profiler.ProfilerActivity.CUDA,
        ]
    ) as p:
        torch.cuda.synchronize()
        for i in range(n_repeat):
            cache.zero_()
            start_event[i].record()
            with torch.cuda.nvtx.range("RunCudaModule"):
                fn()
            end_event[i].record()
        torch.cuda.synchronize()
        times = torch.tensor(
            [s.elapsed_time(e) for s, e in zip(start_event, end_event)]
        )

    res = torch.mean(times).item()
    log.debug("raw events")
    log.debug(p.key_averages().table(sort_by="self_device_time_total", row_limit=-1))
    filtered_events = EventList(
        [
            event
            for event in p.events()
            if (
                event.device_type == DeviceType.CUDA
                and re.match(r"fused_abs_max_\d", event.name) is not None
            )
        ]
    )
    if filtered_events:
        res -= (
            statistics.mean(event.device_time_total for event in filtered_events)
            / 1000.0
        )

    log.debug("profiling results: %s ms", res)
    return res


def do_bench_using_profiling(
    fn: Callable[[], Any],
    warmup: int = 25,
    rep: int = 100,
    is_vetted_benchmarking: bool = False,
) -> float:
    # We did't use decorator may_distort_benchmarking_result directly since that
    # requires us to import torch._inductor.runtime.benchmarking into global scope.
    # Importing torch._inductor.runtime.benchmarking will cause cuda initialization
    # (because of calling torch.cuda.available in global scope)
    # which cause failure in vllm when it create child processes. Check log:
    #   https://gist.github.com/shunting314/c194e147bf981e58df095c14874dd65a
    #
    # Another way to solve the issue is to just move do_bench_using_profiling
    # to torch._inductor.runtime.benchmarking and change all the call site.
    # But that's not trivial due to so many call sites in and out of pytorch.

    from torch._inductor.runtime.benchmarking import may_distort_benchmarking_result

    return may_distort_benchmarking_result(_do_bench_using_profiling)(
        fn, warmup, rep, is_vetted_benchmarking
    )


def _do_bench_using_profiling(
    fn: Callable[[], Any],
    warmup: int = 25,
    rep: int = 100,
    is_vetted_benchmarking: bool = False,
) -> float:
    """
    Returns benchmark results by examining torch profiler events.
    This could be more accurate as it doesn't count CPU side overhead.
    However, this also requires manually excluding irrelevant event, e.g.
    vectorized_elementwise_kernel which is used to fill L2 cache,
    various CUDA events, etc, so could also be fragile.
    """

    if not is_vetted_benchmarking:
        from torch._inductor.runtime.benchmarking import may_ban_benchmarking

        may_ban_benchmarking()

    fn()
    torch.cuda.synchronize()
    cache = torch.empty(int(256e6 // 4), dtype=torch.int, device="cuda")

    # Estimate the runtime of the function
    start_event = torch.cuda.Event(enable_timing=True)
    end_event = torch.cuda.Event(enable_timing=True)
    start_event.record()
    for _ in range(5):
        cache.zero_()
        fn()
    end_event.record()
    torch.cuda.synchronize()
    estimate_ms = start_event.elapsed_time(end_event) / 5

    # compute number of warmup and repeat
    n_warmup = max(1, int(warmup / estimate_ms))
    n_repeat = max(1, int(rep / estimate_ms))

    # Warm-up
    for _ in range(n_warmup):
        fn()

    torch.cuda.synchronize()

    with torch.profiler.profile(
        activities=[
            torch.profiler.ProfilerActivity.CUDA,
        ]
    ) as p:
        # Benchmark
        for _ in range(n_repeat):
            # we clear the L2 cache before each run
            cache.zero_()
            # record time of `fn`
            fn()
        # Record clocks
        torch.cuda.synchronize()

    log.debug("raw events")
    log.debug(p.key_averages().table(sort_by="self_device_time_total", row_limit=-1))

    filtered_events = EventList(
        [
            event
            for event in p.events()
            if event.device_type == DeviceType.CUDA and event.name != "Context Sync"
        ]
    )
    if len(filtered_events) % n_repeat != 0:
        raise RuntimeError(
            "Failed to divide all profiling events into #repeat groups. "
            "#CUDA events: %d, #repeats: %s",
            len(filtered_events),
            n_repeat,
        )
    num_event_per_group = len(filtered_events) / n_repeat
    actual_events = EventList(
        [
            event
            for i, event in enumerate(filtered_events)
            if i % num_event_per_group != 0
        ]
    )
    actual_events._build_tree()
    actual_events = actual_events.key_averages()

    log.debug("profiling time breakdown")
    log.debug(actual_events.table(row_limit=-1))

    res = sum(event.device_time_total for event in actual_events) / 1000.0 / n_repeat
    log.debug("profiling results: %s ms", res)
    return res


@functools.cache
def has_torchvision_roi_align() -> bool:
    try:
        from torchvision.ops import roi_align  # noqa: F401

        torch._C._dispatch_has_kernel_for_dispatch_key("torchvision::nms", "Meta")
        return roi_align is not None and hasattr(
            getattr(torch.ops, "torchvision", None), "roi_align"
        )
    except ImportError:
        return False
    except RuntimeError as e:
        assert "torchvision::nms does not exist" in str(e)
        return False


def decode_device(device: Union[Optional[torch.device], str]) -> torch.device:
    if device is None:
        return torch.tensor(0.0).device  # default device
    if isinstance(device, str):
        device = torch.device(device)
    if device.type not in ("cpu", "meta") and device.index is None:
        device_interface = get_interface_for_device(device.type)
        return torch.device(device.type, index=device_interface.Worker.current_device())
    return device


def sympy_product(it: Iterable[sympy.Expr]) -> sympy.Expr:
    return functools.reduce(operator.mul, it, sympy.S.One)


def sympy_dot(seq1: Sequence[sympy.Expr], seq2: Sequence[sympy.Expr]) -> sympy.Expr:
    assert len(seq1) == len(seq2)
    return sympy.expand(sum(a * b for a, b in zip(seq1, seq2)))


def unique(it: Iterable[_T]) -> ValuesView[_T]:
    return {id(x): x for x in it}.values()


def ceildiv(
    number: Union[int, sympy.Expr], denom: Union[int, sympy.Expr]
) -> Union[int, sympy.Expr]:
    if isinstance(number, sympy.Expr) or isinstance(denom, sympy.Expr):
        return CeilDiv(sympy.sympify(number), sympy.sympify(denom))
    # TODO: There is a bug in a call to this function, to repro:
    # python benchmarks/dynamo/huggingface.py --inductor -d cuda --accuracy
    # --amp --only YituTechConvBert --dynamic-shapes
    assert isinstance(number, int) and isinstance(denom, int), (
        f"{number}: {type(number)}, {denom}: {type(denom)}"
    )
    return runtime_ceildiv(number, denom)


def _type_of(key: Optional[torch.dtype]) -> str:
    # Use the function here to get rid of dependencies on the Triton during the codegen.
    # Refer to Triton implementation here:
    # https://github.com/triton-lang/triton/blob/98b5945d2aef679e00ebca8e07c35c3658ec76de/python/triton/runtime/jit.py#L238
    # `None` is nullptr.  Implicitly convert to *i8.
    if key is None:
        return "*i8"
    dtype_str = str(key).split(".")[-1]
    tys = {
        "bool": "i1",
        "float8e4nv": "fp8e4nv",
        "float8e5": "fp8e5",
        "float8e4b15": "fp8e4b15",
        "float8e4b15x4": "fp8e4b15x4",
        "float8_e4m3fn": "fp8e4nv",
        "float8_e5m2": "fp8e5",
        # TODO: remove when support is added in triton
        # https://github.com/triton-lang/triton/issues/6054
        "float8_e8m0fnu": "u8",
        "float4_e2m1fn_x2": "u8",
        "float16": "fp16",
        "bfloat16": "bf16",
        "float32": "fp32",
        "float64": "fp64",
        "int8": "i8",
        "int16": "i16",
        "int32": "i32",
        "int64": "i64",
        "uint8": "u8",
        "uint16": "u16",
        "uint32": "u32",
        "uint64": "u64",
    }
    # reinterpret can create triton type
    tys.update({v: v for v in list(tys.values())})
    return key if isinstance(key, str) else f"*{tys[dtype_str]}"


def convert_shape_to_inductor(
    lst: Iterable[Union[int, torch.SymInt]],
) -> list[sympy.Expr]:
    """
    Gets the shape and stride of a tensor. For non-symbolic tensors, this is
    trivial. But for symbolic tensors, we need to map from SymIntNode into
    sympy.Expr.
    """
    return [sympy.sympify(i) for i in lst]


def convert_to_symint(i: Union[int, sympy.Expr]) -> Union[int, torch.SymInt]:
    """
    Like convert_shape_to_symint, but operates on a single expression.
    """
    from .virtualized import V

    return (
        i
        if isinstance(i, int)
        else (
            int(i)
            if isinstance(i, sympy.Integer)
            else V.graph.sizevars.shape_env.create_symintnode(i, hint=None)
        )
    )


def convert_shape_to_symint(
    lst: Iterable[Union[int, sympy.Expr]],
) -> list[Union[int, torch.SymInt]]:
    """
    Takes a list of shapes from Inductor and converts them into symints (or just
    ints if all shapes are static).
    """
    return [convert_to_symint(i) for i in lst]


def is_view(op: torch._ops.OpOverload) -> bool:
    """
    Does this op overload have aliasing
    """
    return any(a.alias_info is not None for a in op._schema.arguments)


def is_pointwise_use(
    use: Node,
    is_pointwise_fn: Callable[[torch._ops.OpOverload], bool] = lambda _: False,
) -> bool:
    """
    Do all uses of this op have torch.Tag.pointwise or return True for optional `is_pointwise_fn`

    Uses in views ops will follow the views uses
    """

    if use.op != "call_function":
        return False
    if not (
        isinstance(use.target, torch._ops.OpOverload) or use.target is operator.getitem
    ):
        return False

    target = cast(torch._ops.OpOverload, use.target)
    if target is operator.getitem or is_view(target):
        return all(is_pointwise_use(u, is_pointwise_fn) for u in use.users)

    return torch.Tag.pointwise in target.tags or is_pointwise_fn(target)


def gen_gm_and_inputs(
    target: Any, args: list[Any], kwargs: dict[str, Any]
) -> tuple[GraphModule, list[torch.Tensor]]:
    g = torch.fx.Graph()
    graph_args: list[torch.Tensor] = []

    def add_tensor_arg(arg: torch.Tensor) -> Node:
        graph_args.append(arg)
        return g.placeholder(f"arg{len(graph_args)}")

    node = g.call_function(
        target, *tree_map_only(torch.Tensor, add_tensor_arg, (args, kwargs))
    )
    if (
        len(target._schema.returns) == 1
        and str(target._schema.returns[0].type) == "Tensor"
    ):
        node = (node,)  # type: ignore[assignment]
    g.output(node)

    gm = torch.fx.GraphModule({}, g)
    return gm, graph_args


def synchronize(device: str = "cuda") -> None:
    if device == "cpu":
        return
    device_interface = get_interface_for_device(device)
    if device_interface.is_available():
        device_interface.synchronize()


def timed(
    model: Callable[..., Any],
    example_inputs: Sequence[Any],
    times: int = 1,
    device: str = "cuda",
) -> float:
    synchronize(device)
    torch.manual_seed(1337)
    t0 = time.perf_counter()
    for _ in range(times):
        result = model(*example_inputs)
        synchronize(device)
    t1 = time.perf_counter()
    # GC the result after timing
    assert result is not None  # type: ignore[possibly-undefined]
    return t1 - t0


def print_performance(
    model: Callable[..., Any],
    example_inputs: Sequence[Any] = (),
    times: int = 10,
    repeat: int = 10,
    baseline: float = 1.0,
    device: str = "cuda",
) -> float:
    timings = torch.tensor(
        [timed(model, example_inputs, times, device) for _ in range(repeat)]
    )
    took = torch.median(timings) / times
    print(f"{took / baseline:.6f}")
    return took.item()


def precompute_method(obj: Any, method: str) -> None:
    """Replace obj.method() with a new method that returns a precomputed constant."""
    result = getattr(obj, method)()
    setattr(obj, method, lambda: result)


def precompute_methods(obj: Any, methods: list[str]) -> None:
    """Replace methods with new methods that returns a precomputed constants."""
    for method in methods:
        precompute_method(obj, method)


def cmp(a: int, b: int) -> int:
    return int(a > b) - int(a < b)


def pad_listlike(x: Union[int, Sequence[int]], size: int) -> Sequence[int]:
    if isinstance(x, int):
        return [x] * size
    if len(x) == 1:
        return type(x)([x[0]]) * size  # type: ignore[call-arg, operator, return-value]
    return x


# Used to ensure that iterating over a set is deterministic
def tuple_sorted(x: tuple[_T, ...]) -> list[_T]:
    if len(x) == 0:
        return []

    def sort_func(elem: _T) -> str:
        if isinstance(elem, str):
            return elem

        from .scheduler import BaseSchedulerNode

        assert isinstance(elem, BaseSchedulerNode)
        return elem.get_name()

    return sorted(x, key=sort_func)


P = ParamSpec("P")
RV = TypeVar("RV", covariant=True)
FN_TYPE = Callable[Concatenate[Any, P], RV]


class CachedMethod(Protocol, Generic[P, RV]):
    @staticmethod
    def clear_cache(cache: Any) -> None: ...

    def __call__(self, *args: P.args, **kwargs: P.kwargs) -> RV: ...


# See https://github.com/python/mypy/issues/13222#issuecomment-1193073470 to understand the type signature
def cache_on_self(fn: Callable[Concatenate[Any, P], RV]) -> CachedMethod[P, RV]:
    name = fn.__name__
    key = f"__{name}_cache"

    # wrapper is likely on the hot path, compile a specialized version of it
    ctx = {"fn": fn}
    exec(
        f"""\
        def {name}_cache_on_self(self):
            try:
                return self.{key}
            except AttributeError:
                pass
            rv = fn(self)
            object.__setattr__(self, "{key}", rv)
            return rv
        """.lstrip(),
        ctx,
    )
    wrapper = functools.wraps(fn)(ctx[f"{name}_cache_on_self"])

    def clear_cache(self: Any) -> None:
        if hasattr(self, key):
            delattr(self, key)

    wrapper.clear_cache = clear_cache  # type: ignore[attr-defined]
    return wrapper  # type: ignore[return-value]


def cache_property_on_self(fn: Callable[P, RV]) -> CachedMethod[P, RV]:
    """
    Variant of cache_on_self for properties. The only difference is the type signature.
    """
    # pyrefly: ignore [bad-argument-type]
    return cache_on_self(fn)


def cache_on_self_and_args(
    class_name: str,
) -> Callable[[FN_TYPE[P, RV]], FN_TYPE[P, RV]]:
    # include both class_name and fn_name in the key to support `super().fn(self, **args, **kwargs)` calls.

    def wrapper(
        fn: FN_TYPE[P, RV],
    ) -> FN_TYPE[P, RV]:
        key = f"__{class_name}_{fn.__name__}_cache"

        # wrapper is likely on the hot path, compile a specialized version of it
        ctx = {"fn": fn}
        exec(
            f"""\
            def inner(self: Any, *args: P.args, **kwargs: P.kwargs) -> RV:
                args_kwargs = (args, tuple(sorted(kwargs.items())))

                if not hasattr(self, "{key}"):
                    object.__setattr__(self, "{key}", {{}})

                cache = self.{key}

                try:
                    return cache[args_kwargs]
                except KeyError:
                    pass

                rv = fn(self, *args, **kwargs)

                cache[args_kwargs] = rv
                return rv
            """.lstrip(),
            ctx,
        )
        inner = functools.wraps(fn)(ctx["inner"])

        def clear_cache(self: Any) -> None:
            if hasattr(self, key):
                delattr(self, key)

        inner.clear_cache = clear_cache  # type: ignore[attr-defined]
        return inner

    return wrapper


def aggregate_origins(
    node_schedule: Union[Sequence[BaseSchedulerNode], ExternKernel],
) -> OrderedSet[Node]:
    from . import ir

    if isinstance(node_schedule, list):
        return functools.reduce(
            operator.or_,
            [
                # pyrefly: ignore [missing-attribute]
                node.node.origins
                for node in node_schedule
                if hasattr(node, "node") and node.node
            ],
            OrderedSet(),
        )
    elif isinstance(node_schedule, ir.ExternKernel):
        return node_schedule.origins
    else:
        return OrderedSet()


def get_fused_kernel_name(
    node_schedule: Sequence[BaseSchedulerNode],
    descriptive_names: Literal[True, "torch", "original_aten", "inductor_node"],
) -> str:
    all_origins = aggregate_origins(node_schedule)
    if descriptive_names == "original_aten":

        def get_origin_meta_str(origin):
            original_aten = origin.meta["original_aten"]
            key = ""
            if isinstance(original_aten, torch._ops.OpOverload):
                key = original_aten._overloadpacket.__name__
            elif isinstance(original_aten, torch._ops.HigherOrderOperator):
                key = str(original_aten.name())
            return key

        # Bases the kernel name off of the top-level aten operator (i.e. pre-decompositions)
        sources = [
            get_origin_meta_str(origin)
            for origin in all_origins
            if origin.op == "call_function"
            and "original_aten" in origin.meta
            and origin.meta["original_aten"] is not None
        ]
        sources = sorted(OrderedSet(sources))
    elif descriptive_names == "torch":
        # Bases the kernel name off of the top-level "torch" operator (i.e. post-dynamo graph)
        sources = []
        for origin in all_origins:
            if origin.op == "call_function":
                source_fn = None
                suffix = ""
                if "source_fn_stack" in origin.meta:
                    source_fn = origin.meta["source_fn_stack"][-1]
                elif "fwd_source_fn_stack" in origin.meta:
                    # backward nodes have "fwd_source_fn_stack" instead
                    source_fn = origin.meta["fwd_source_fn_stack"][-1]
                    suffix = "backward"
                if not source_fn:
                    continue
                if isinstance(source_fn[1], str):
                    sources.append(source_fn[1] + suffix)
                else:
                    sources.append(source_fn[1].__name__ + suffix)

        sources = sorted(OrderedSet(sources))
    elif descriptive_names == "inductor_node":
        sources = [
            origin.name for origin in all_origins if origin.op == "call_function"
        ]
    else:
        raise NotImplementedError
    return "_".join(["fused"] + sources)


def get_kernel_metadata(
    node_schedule: Union[Sequence[BaseSchedulerNode], ExternKernel],
    wrapper: PythonWrapperCodegen,
) -> tuple[str, str]:
    """
    Retrieves metadata information for a kernel.
    Args:
        node_schedule (Union[Sequence[BaseSchedulerNode], ExternKernel]):
            Either a sequence of BaseSchedulerNode objects or an ExternKernel instance.
        wrapper (PythonWrapperCodegen):
            An instance of PythonWrapperCodegen, used to define the code comment format.
    Returns:
        tuple[str, str]:
            A tuple containing two strings:
                - The first string represents the kernel's metadata.
                - The second string represent the kernel's detailed metadata.
    """

    all_origins = aggregate_origins(node_schedule)
    inductor_nodes = [origin for origin in all_origins if origin.op == "call_function"]

    from_node_dict = collections.defaultdict(list)
    original_aten_dict = collections.defaultdict(list)

    # Attempt to sort `inductor_nodes` topologically. Note that the case
    # where `inductor_nodes` contains nodes from multiple graph instances
    # is not supported. An example of this is conditional statements.
    single_graph = None
    if inductor_nodes:
        unique_graphs = OrderedSet(n.graph for n in inductor_nodes)
        if len(unique_graphs) == 1:
            single_graph = inductor_nodes[0].graph
            # create a map of idx -> node and cache it
            if not hasattr(single_graph, "_inductor_kernel_metadata_node_to_idx_map"):
                node_to_idx_map = {n: idx for idx, n in enumerate(single_graph.nodes)}
                single_graph._inductor_kernel_metadata_node_to_idx_map = node_to_idx_map  # type: ignore[attr-defined]
            inductor_nodes.sort(
                key=lambda n: single_graph._inductor_kernel_metadata_node_to_idx_map[n]  # type: ignore[attr-defined]
            )

    for node in inductor_nodes:
        if "original_aten" in node.meta and node.meta["original_aten"] is not None:
            original_aten = node.meta["original_aten"]
            key = None
            if isinstance(original_aten, torch._ops.OpOverload):
                key = str(original_aten._overloadpacket)
            elif isinstance(original_aten, torch._ops.HigherOrderOperator):
                key = str(original_aten.name())
            if key:
                original_aten_dict[key].append(node.name)
        if "from_node" in node.meta:
            key = node.meta["from_node"][0].name
            from_node_dict[key].append(node.name)
        elif node.meta.get("partitioner_tag") == "is_backward":
            # backward nodes currently don't have a "from node"
            from_node_dict[node.name].append(node.name)
    sort_str = "Topologically Sorted" if single_graph is not None else "Unsorted"
    metadata = (
        f"{wrapper.comment} {sort_str} Source Nodes: [{', '.join(from_node_dict.keys())}], "
        f"Original ATen: [{', '.join(original_aten_dict.keys())}]"
    )

    # trace back to original node here
    detailed_metadata = [f"{wrapper.comment} Source node to ATen node mapping:"]
    for original_node, nodes in sorted(from_node_dict.items()):
        detailed_metadata.append(
            f"{wrapper.comment}   {original_node} => {', '.join(sorted(nodes))}"
        )

    # print the aot_autograd graph fragment
    if single_graph is not None:
        from . import ir

        detailed_metadata.append(f"{wrapper.comment} Graph fragment:")
        all_reads: OrderedSet[str] = OrderedSet()
        all_writes: list[str] = []
        if not isinstance(node_schedule, ir.ExternKernel):
            from .virtualized import V

            def get_buffer_info(
                buffer: Union[ir.TensorBox, ir.Buffer, ir.TorchBindObject], rw_name: str
            ) -> tuple[str, ir.Layout | None]:
                if isinstance(buffer, ir.TensorBox) and isinstance(
                    buffer.data, ir.StorageBox
                ):
                    origin_node = buffer.data.data.origin_node
                else:
                    origin_node = buffer.origin_node
                if origin_node is None:
                    # use the read/write name if no origin node is found
                    name = rw_name
                else:
                    name = origin_node.name
                try:
                    layout = buffer.get_layout()
                except NotImplementedError:
                    layout = None
                return name, layout

            def stringify_shape(shape: Iterable[int]) -> str:
                return f"[{', '.join([str(x) for x in shape])}]"

            def stringfy_layout(layout: ir.Layout | None) -> str:
                if layout is None:
                    return ""
                shape_annotation = f"{stringify_shape(layout.size)}"
                stride_annotation = f"{stringify_shape(layout.stride)}"
                device_annotation = f"{layout.device}"

                return (
                    f'"{dtype_abbrs[layout.dtype]}{shape_annotation}'
                    f'{stride_annotation}{device_annotation}"'
                )

            for n in node_schedule:
                if not hasattr(n, "read_writes") or n.read_writes is None:
                    continue
                if hasattr(n.read_writes, "reads") and n.read_writes.reads is not None:
                    for r in n.read_writes.reads:
                        # Remove the dupricated inputs
                        if r.name in all_reads:
                            continue
                        all_reads.add(r.name)
                        buffer = V.graph.try_get_buffer(r.name)
                        if buffer is None:
                            continue
                        input_name, layout = get_buffer_info(buffer, r.name)
                        detailed_metadata.append(
                            f"{wrapper.comment}   %{input_name} : Tensor "
                            f"{stringfy_layout(layout)} = PlaceHolder[target={input_name}]"
                        )

                if (
                    hasattr(n.read_writes, "writes")
                    and n.read_writes.writes is not None
                ):
                    for w in n.read_writes.writes:
                        buffer = V.graph.try_get_buffer(w.name)
                        if buffer is None:
                            continue
                        output_name, _ = get_buffer_info(buffer, w.name)

                        all_writes.append("%" + output_name)

        for node in inductor_nodes:
            detailed_metadata.append(
                f"{wrapper.comment}   {node.format_node(include_tensor_metadata=True)}"
            )

        detailed_metadata.append(f"{wrapper.comment}   return {','.join(all_writes)}")

    return metadata, "\n".join(detailed_metadata)


def dominated_nodes(
    initial_queue: Iterable[torch.fx.Node],
    skip_filter: Optional[Callable[[Any], bool]] = None,
) -> OrderedSet[torch.fx.Node]:
    """Returns the set of nodes whose values depend on those within initial_queue"""
    initial_queue = list(initial_queue)
    dominated_set = OrderedSet(initial_queue)

    while initial_queue:
        node = initial_queue.pop()
        for user in node.users:
            if skip_filter and skip_filter(user):
                continue
            if user not in dominated_set:
                dominated_set.add(user)
                initial_queue.append(user)

    return dominated_set


def gather_origins(
    args: Sequence[IRNode], kwargs: dict[str, IRNode]
) -> OrderedSet[torch.fx.Node]:
    from . import ir

    def is_unrealized_node(n: IRNode) -> bool:
        if isinstance(n, ir.TensorBox):
            return is_unrealized_node(n.data)
        if isinstance(n, ir.StorageBox):
            return is_unrealized_node(n.data)
        return isinstance(n, ir.IRNode) and not isinstance(
            n,
            (
                ir.ComputedBuffer,
                ir.InputsKernel,
                ir.InputBuffer,
                ir.TemplateBuffer,
            ),
        )

    # kwargs and args may include a container of node, for example torch.cat([t1, t2])
    # flatten them before search the unrealized nodes
    kwargs_flatten, _ = tree_flatten(kwargs)
    kwargs_origins = [val.origins for val in kwargs_flatten if is_unrealized_node(val)]
    args_flatten, _ = tree_flatten(args)
    args_origins = [val.origins for val in args_flatten if is_unrealized_node(val)]
    return OrderedSet(itertools.chain(*args_origins, *kwargs_origins))


def sympy_str(expr: sympy.Expr) -> str:
    """
    Normal sympy str is very slow, this is a lot faster.  The result are
    somewhat worse, as it doesn't do as much simplification.  So don't
    use this for final codegen.
    """

    def is_neg_lead(expr: sympy.Expr) -> bool:
        return (
            isinstance(expr, sympy.Mul) and len(expr.args) == 2 and expr.args[0] == -1
        )

    def sympy_str_add(expr: sympy.Expr) -> str:
        if isinstance(expr, sympy.Add):
            # Special case 'a - b'. Note that 'a - b - c' will still appear as
            # 'a + -1 * b + -1 * c'.
            if len(expr.args) == 2 and is_neg_lead(expr.args[1]):
                return f"{sympy_str_mul(expr.args[0])} - {sympy_str_mul(expr.args[1].args[1])}"
            else:
                return " + ".join(map(sympy_str_mul, expr.args))
        else:
            return sympy_str_mul(expr)

    def sympy_str_mul(expr: sympy.Expr) -> str:
        if isinstance(expr, sympy.Mul):
            if is_neg_lead(expr):
                # Special case '-a'. Note that 'a * -b' will still appear as
                # '-1 * a * b'.
                return f"-{sympy_str_atom(expr.args[1])}"
            else:
                return " * ".join(map(sympy_str_atom, expr.args))
        else:
            return sympy_str_atom(expr)

    def sympy_str_atom(expr: sympy.Expr) -> str:
        if isinstance(expr, sympy.Symbol):
            return expr.name
        elif isinstance(expr, (sympy.Add, sympy.Mul)):
            return f"({sympy_str_add(expr)})"
        elif isinstance(expr, (ModularIndexing, CleanDiv, FloorDiv, Identity)):
            return f"{expr.func.__name__}({', '.join(map(sympy_str, expr.args))})"
        else:
            return str(expr)

    return sympy_str_add(expr)


def get_bounds_index_expr(index: sympy.Expr) -> ValueRanges[Any]:
    from .virtualized import V

    # If this expression does not come from an FX node, we compute its bounds
    if (
        config.compute_all_bounds
        and (fx_node := getattr(V.interpreter, "current_node", None))
        and fx_node.target != "index_expr"
    ):
        return bound_sympy(index)
    else:
        return ValueRanges.unknown()


def prefix_is_reduction(prefix: str) -> bool:
    return prefix[0] == "r"


def sympy_index_symbol_with_prefix(prefix: SymT, idx: int) -> sympy.Symbol:
    """
    Used to generate an integer-nonnegative symbol.
    """
    # This should never be used for creating shape/stride symbols, as those
    # should all be allocated before Inductor.
    assert prefix != SymT.SIZE
    # NOTE: shape symbols are positive (> 0), but index variables are only
    # non-negative (>= 0).
    return make_symbol(prefix, idx, integer=True, nonnegative=True)


def generate_assert(check: bool) -> bool:
    return (check or config.debug_index_asserts) and config.assert_indirect_indexing


def sympy_index_symbol(name: str) -> sympy.Symbol:
    """
    Used to generate an integer-nonnegative symbol.
    """
    # This should never be used for creating shape/stride symbols, as those
    # should all be allocated before Inductor.
    assert name[0] != "s"
    # NOTE: shape symbols are positive (> 0), but index variables are only
    # non-negative (>= 0).
    return sympy.Symbol(name, integer=True, nonnegative=True)


def sympy_subs(expr: sympy.Expr, replacements: dict[sympy.Expr, Any]) -> sympy.Expr:
    """
    When the passed replacement symbol v is a string, it is converted to a symbol with name v that
    have the same replaced expression integer and nonnegative properties.
    """

    def to_symbol(
        replaced: sympy.Expr, replacement: Union[sympy.Expr, str]
    ) -> sympy.Symbol:
        assert isinstance(replaced, sympy.Expr)
        if isinstance(replacement, str):
            return sympy.Symbol(
                replacement,
                integer=replaced.is_integer,  # type: ignore[attr-defined]
                nonnegative=replaced.is_nonnegative,  # type: ignore[attr-defined]
            )
        else:
            return replacement

    # xreplace is faster than subs, but is way more picky
    return sympy.sympify(expr).xreplace(
        {k: to_symbol(k, v) for k, v in replacements.items()}
    )


def is_symbolic(a: Any) -> TypeGuard[Union[torch.SymInt, torch.Tensor]]:
    return isinstance(a, torch.SymInt) or (
        isinstance(a, torch.Tensor)
        and any(is_symbolic(x) for x in itertools.chain(a.size(), a.stride()))
    )


def any_is_symbolic(*args: Any) -> bool:
    return any(is_symbolic(a) for a in args)


def get_first_incompatible_cudagraph_node(
    gm: torch.fx.GraphModule,
) -> Optional[torch.fx.Node]:
    from torch.fx.experimental.symbolic_shapes import free_unbacked_symbols

    forbidden_set = OrderedSet(
        [
            "aten._fused_moving_avg_obs_fq_helper.default",
            "aten._fused_moving_avg_obs_fq_helper_functional.default",
            "fbgemm.dense_to_jagged.default",
            "fbgemm.jagged_to_padded_dense.default",
            "run_and_save_rng_state",
            "run_with_rng_state",
            "aten._local_scalar_dense",
            # Technically, it's not necessary to ban this, because an
            # assert_scalar with constant arguments can be validly run
            # with CUDA graphs, but the operator is also pointless with
            # constant arguments, so might as well ban
            "aten._assert_scalar",
        ]
    )
    if torch.are_deterministic_algorithms_enabled():
        forbidden_set.update(
            (
                "aten._unsafe_index_put.default",
                "aten._unsafe_masked_index_put_accumulate.default",
                "aten.index_put.default",
                "aten.index_put_.default",
                "aten.scatter.src",
                "aten.scatter.reduce",
                "aten.scatter.value_reduce",
                "aten.scatter_add_",
                "aten.scatter_add.default",
                "aten.scatter_reduce.two",
                "aten.scatter_reduce_.two",
                "aten.scatter_reduce.two_out",
            )
        )

    for node in gm.graph.nodes:
        if str(node.target) in forbidden_set:
            return node

        if (
            not torch._inductor.config.graph_partition
            and isinstance(node.target, torch._ops.OpOverload)
            and torch._C.Tag.cudagraph_unsafe in node.target.tags  # type: ignore[attr-defined]
        ):
            # skip cudagraph if a cudagraph_unsafe op is detected.
            # graph_partition helps by splitting on this cudagraph_unsafe
            # op and cudagraphifying the subgraphs.
            return node

        if (val := node.meta.get("val")) is not None and free_unbacked_symbols(val):
            return node

    return None


def output_node(gm: torch.fx.GraphModule) -> Node:
    """Get the output node from an FX graph"""
    last_node = next(iter(reversed(gm.graph.nodes)))
    assert last_node.op == "output"
    return last_node


def get_all_devices(gm: torch.fx.GraphModule) -> OrderedSet[torch.device]:
    placeholder_nodes = gm.graph.find_nodes(op="placeholder")
    input_devices: OrderedSet[torch.device] = OrderedSet(
        node.meta["val"].device
        for node in placeholder_nodes
        if isinstance(node.meta.get("val"), torch.Tensor)
    )

    out_arg = output_node(gm).args[0]  # type: ignore[union-attr]
    out_args = out_arg if isinstance(out_arg, tuple) else (out_arg,)
    out_devices: OrderedSet[torch.device] = OrderedSet(
        arg.meta["val"].device
        for arg in out_args
        if isinstance(arg, torch.fx.Node)
        and isinstance(arg.meta.get("val"), torch.Tensor)
    )
    return input_devices | out_devices


import gc


def unload_xpu_triton_pyds() -> None:
    # unload __triton_launcher.pyd
    for module_name in list(sys.modules.keys()):
        if not module_name.startswith("torch._inductor.runtime.compile_tasks."):
            continue
        m = sys.modules[module_name]
        for attr_name in m.__dict__:
            if attr_name.startswith("triton_"):
                kernel = getattr(m, attr_name)
                if isinstance(
                    kernel, torch._inductor.runtime.triton_heuristics.CachingAutotuner
                ):
                    for result in kernel.compile_results:
                        if isinstance(
                            result,
                            torch._inductor.runtime.triton_heuristics.TritonCompileResult,
                        ):
                            # pyrefly: ignore [missing-attribute]
                            result.kernel.run.mod.__del__()
        del sys.modules[module_name]

    # unload spirv_utils.pyd
    if "triton.runtime.driver" in sys.modules:
        mod = sys.modules["triton.runtime.driver"]
        del type(mod.driver.active.utils).instance
        del mod.driver.active.utils

    gc.collect()


_registered_caches: list[Any] = []


def clear_on_fresh_cache(obj: Any) -> Any:
    """
    Use this decorator to register any caches that should be cache_clear'd
    with fresh_cache().
    """
    if not hasattr(obj, "cache_clear") or not callable(obj.cache_clear):
        raise AttributeError(f"{obj} does not have a cache_clear method")

    _registered_caches.append(obj)
    return obj


def clear_caches() -> None:
    """
    Clear all registered caches.
    """
    for obj in _registered_caches:
        obj.cache_clear()


@contextlib.contextmanager
def fresh_cache(
    cache_entries: Optional[dict[str, Any]] = None,
    dir: Optional[str] = None,
    delete: bool = True,
) -> Iterator[None]:
    """
    Contextmanager that provides a clean tmp cachedir for pt2 caches.

    Optionally, pass a dict as 'cache_entries' to get a list of filenames and sizes
    generated with this cache instance.
    """
    clear_caches()

    from torch._inductor.cpp_builder import normalize_path_separator

    inductor_cache_dir = normalize_path_separator(tempfile.mkdtemp(dir=dir))
    try:
        with mock.patch.dict(
            os.environ, {"TORCHINDUCTOR_CACHE_DIR": inductor_cache_dir}
        ):
            log.debug("Using inductor cache dir %s", inductor_cache_dir)
            triton_cache_dir = normalize_path_separator(
                os.path.join(inductor_cache_dir, "triton")
            )
            with mock.patch.dict(os.environ, {"TRITON_CACHE_DIR": triton_cache_dir}):
                yield
                if isinstance(cache_entries, dict):
                    assert len(cache_entries) == 0, "expected empty cache_entries dict"
                    if os.path.exists(triton_cache_dir):
                        files = os.listdir(triton_cache_dir)
                        cache_entries.update(
                            {
                                f: os.path.getsize(os.path.join(triton_cache_dir, f))
                                for f in files
                                if ".lock" not in f
                            }
                        )
        if delete:
            if is_windows() and torch.xpu.is_available():
                unload_xpu_triton_pyds()

            shutil.rmtree(
                inductor_cache_dir,
                # Let's not fail if we can't clean up the temp dir. Also note that for
                # Windows, we can't delete the loaded modules because the module binaries
                # are open.
                ignore_errors=is_windows(),
                onerror=lambda func, path, exc_info: log.warning(
                    "Failed to remove temporary cache dir at %s",
                    inductor_cache_dir,
                    exc_info=exc_info,
                ),
            )
    except Exception:
        log.warning("on error, temporary cache dir kept at %s", inductor_cache_dir)
        raise
    finally:
        clear_caches()


# Deprecated functions -- only keeping them for BC reasons
clear_on_fresh_inductor_cache = clear_on_fresh_cache
clear_inductor_caches = clear_caches
fresh_inductor_cache = fresh_cache


def argsort(seq: Sequence[Any]) -> list[int]:
    # preserve original order for equal strides
    getter = seq.__getitem__
    a_r = range(len(seq))
    return list(reversed(sorted(a_r, key=getter, reverse=True)))  # noqa: C413


def argsort_sym(
    shape_env: ShapeEnv, seq: Sequence[Union[int, torch.SymInt, sympy.Expr]]
) -> list[int]:
    def cmp(a: tuple[int, sympy.Expr], b: tuple[int, sympy.Expr]) -> int:
        a_idx, a_val = a
        b_idx, b_val = b

        def evaluate(expr: Union[bool, torch.SymInt, sympy.Expr]) -> bool:
            if isinstance(expr, bool):
                return expr
            return shape_env.evaluate_expr(expr, size_oblivious=True)

        if evaluate(a_val < b_val):
            return -1
        if evaluate(a_val > b_val):
            return 1
        # If strides are the same, prefer the original order.
        # (this matches argsort's algorithm).
        # For strides = [2048, 2048, 16, 1], this is
        # [3, 2, 1, 0].
        if a_idx < b_idx:
            return 1
        if a_idx > b_idx:
            return -1
        return 0

    # Strategy: convert all symints to sympy.Expr, then use a custom comparator
    exprs = [
        (idx, s.node.expr if isinstance(s, torch.SymInt) else s)
        for idx, s in enumerate(seq)
    ]
    exprs = sorted(exprs, key=functools.cmp_to_key(cmp))
    result = [idx for idx, _ in exprs]
    return result


@functools.lru_cache(8)
def get_dtype_size(dtype: torch.dtype) -> int:
    # TODO: Investigate why uint64 tensor creation causes overflow error:
    # Workaround for RuntimeError in memory size calculation, but underlying cause unclear
    if dtype == torch.uint64:
        return 8
    return torch.empty((), dtype=dtype).element_size()


class LineContext(NamedTuple):
    context: Any


@dataclasses.dataclass
class ValueWithLineMap:
    value: str
    line_map: list[tuple[int, LineContext]]


class IndentedBuffer:
    tabwidth = 4

    def __init__(self, initial_indent: int = 0) -> None:
        self._lines: list[Union[DeferredLineBase, LineContext, str]] = []
        self._indent = initial_indent

    @contextlib.contextmanager
    def set_tabwidth(self, tabwidth: int) -> Iterator[None]:
        prev = self.tabwidth
        try:
            self.tabwidth = tabwidth
            yield
        finally:
            self.tabwidth = prev

    def getvaluewithlinemap(self) -> ValueWithLineMap:
        buf = StringIO()
        p = 1
        linemap: list[tuple[int, LineContext]] = []
        for li in self._lines:
            if isinstance(li, DeferredLineBase):
                line = li()
                if line is None:
                    continue
            elif isinstance(li, LineContext):
                linemap.append((p, li.context))
                continue
            else:
                line = li
            assert isinstance(line, str)
            buf.write(line)
            buf.write("\n")
            p += 1 + line.count("\n")
        return ValueWithLineMap(buf.getvalue(), linemap)

    def getvalue(self) -> str:
        return self.getvaluewithlinemap().value

    def getrawvalue(self) -> str:
        buf = StringIO()
        for li in self._lines:
            if isinstance(li, DeferredLineBase):
                line = li()
                if line is None:
                    continue
            elif isinstance(li, LineContext):
                continue
            else:
                line = li
            assert isinstance(line, str)
            # backslash implies line continuation
            if line.endswith("\\"):
                buf.write(line[:-1])
            else:
                buf.write(line)
                buf.write("\n")
        return buf.getvalue()

    def clear(self) -> None:
        self._lines.clear()

    def __bool__(self) -> bool:
        return bool(self._lines)

    def prefix(self) -> str:
        return " " * (self._indent * self.tabwidth)

    def newline(self) -> None:
        self.writeline("\n")

    def writeline(self, line: Union[LineContext, DeferredLineBase, str]) -> None:
        if isinstance(line, LineContext):
            self._lines.append(line)
        elif isinstance(line, DeferredLineBase):
            self._lines.append(line.with_prefix(self.prefix()))
        elif line.strip():
            self._lines.append(f"{self.prefix()}{line}")
        else:
            self._lines.append("")

    def writelines(
        self, lines: Sequence[Union[LineContext, DeferredLineBase, str]]
    ) -> None:
        for line in lines:
            self.writeline(line)

    def indent(self, offset: int = 1) -> contextlib.AbstractContextManager[None]:
        @contextlib.contextmanager
        def ctx() -> Iterator[None]:
            self._indent += offset
            try:
                yield
            finally:
                self._indent -= offset

        return ctx()

    def do_indent(self, offset: int = 1) -> None:
        self._indent += offset

    def do_unindent(self, offset: int = 1) -> None:
        self._indent -= offset

    def splice(
        self, other_code: Union[IndentedBuffer, str], strip: bool = False
    ) -> None:
        if isinstance(other_code, IndentedBuffer):
            dedent = float("inf")
            # pyrefly: ignore [bad-assignment]
            for line in other_code._lines:
                if not isinstance(line, LineContext) and line:
                    dedent = min(dedent, len(line) - len(line.lstrip()))
            if math.isinf(dedent):
                dedent = 0
            for line in other_code._lines:
                if isinstance(line, LineContext):
                    self._lines.append(line)
                else:
                    IndentedBuffer.writeline(self, line[int(dedent) :])
        else:
            other_code = textwrap.dedent(other_code)
            if strip:
                other_code = other_code.lstrip()
            if not other_code:
                return
            other_code = other_code.rstrip()
            for s in other_code.split("\n"):
                self.writeline(s)

    def map(self, func: Callable[[Any], Any]) -> IndentedBuffer:
        res = IndentedBuffer(initial_indent=self._indent)
        res._lines = [func(line) for line in self._lines]
        return res

    def __repr__(self) -> str:
        return f"{type(self)}({self.getvalue()})"

    def __add__(self, other: Self) -> IndentedBuffer:
        assert self._indent == other._indent
        res = IndentedBuffer(initial_indent=self._indent)
        # TODO(rec): or should this be self.__class__(initial_indent=self._indent)?
        res.writelines(self._lines)
        res.writelines(other._lines)
        return res

    def contains(self, new_line: Union[DeferredLineBase, LineContext, str]) -> bool:
        return new_line in self._lines


class FakeIndentedBuffer(IndentedBuffer):
    def __init__(self) -> None:
        super().__init__()

    def __getattribute__(self, name: str) -> Any:
        if name == "__class__":  # Allow access to the class attribute
            return object.__getattribute__(self, name)
        raise RuntimeError(
            f"Tried to call self.{name} on FakeIndentedBuffer. This buffer"
            "is currently used on TritonTemplateKernel to prevent actual"
            "writes to the body without explicitly specifying the body with"
            "`TritonTemplateKernel.set_subgraph_body(name)`"
        )


@contextlib.contextmanager
def restore_stdout_stderr() -> Iterator[None]:
    initial_stdout, initial_stderr = sys.stdout, sys.stderr
    try:
        yield
    finally:
        sys.stdout, sys.stderr = initial_stdout, initial_stderr


class DeferredLineBase:
    """A line that can be 'unwritten' at a later time"""

    def __init__(self, line: str):
        if not line.strip():
            line = ""
        self.line = line

    def __call__(self) -> Union[str, None]:
        """Returns either self.line or None to indicate the line has been 'unwritten'"""
        raise NotImplementedError

    def _new_line(self, line: str) -> Self:
        """Returns a new deferred line with the same condition"""
        raise NotImplementedError

    def with_prefix(self, prefix: str) -> Self:
        return self._new_line(f"{prefix}{self.line}")

    def lstrip(self) -> Self:
        return self._new_line(self.line.lstrip())

    def __getitem__(self, index: Union[int, slice]) -> Self:
        return self._new_line(self.line[index])

    def __bool__(self) -> bool:
        return bool(self.line)

    def __len__(self) -> int:
        return len(self.line)


class DelayReplaceLine(DeferredLineBase):
    """At end of codegen call `line.replace(key, value_fn())`"""

    def __init__(self, key: str, value_fn: Callable[[], str], line: str):
        super().__init__(line)
        self.key = key
        self.value_fn = value_fn

    def __call__(self) -> str:
        return self.line.replace(self.key, self.value_fn())

    def _new_line(self, line: str) -> DelayReplaceLine:
        return DelayReplaceLine(self.key, self.value_fn, line)


class DelayMaybeLine(DeferredLineBase):
    """At end of codegen return `line if `pred_fn() else None`"""

    def __init__(self, pred_fn: Callable[[], bool], line: str):
        super().__init__(line)
        self.pred_fn = pred_fn

    def __call__(self) -> str | None:
        return self.line if self.pred_fn() else None

    def _new_line(self, line: str) -> DelayMaybeLine:
        return DelayMaybeLine(self.pred_fn, line)


@functools.cache
def is_big_gpu(index_or_device: Union[int, torch.device] = 0) -> bool:
    if isinstance(index_or_device, torch.device):
        device = index_or_device
    else:
        device = torch.device(get_gpu_type(), index_or_device)

    prop = DeviceProperties.create(device)

    # SM logic is not relevant to ROCm gpus
    # Arbitrarily skipping the older models
    if torch.version.hip:
        assert prop.major is not None
        if prop.major < 9 or prop.major == 10:
            log.warning("GPU arch does not support max_autotune_gemm mode usage")
            return False
        return True

    min_sms = 16 if device.type == "xpu" else 68  # 3080
    avail_sms = prop.multi_processor_count
    if avail_sms < min_sms:
        log.warning(
            "Not enough SMs to use max_autotune_gemm mode",
            extra={"min_sms": min_sms, "avail_sms": avail_sms},
        )
        return False
    return True


@functools.lru_cache
def get_max_num_sms() -> int:
    if torch.xpu.is_available():
        return torch.xpu.get_device_properties().gpu_subslice_count
    return torch.cuda.get_device_properties("cuda").multi_processor_count


@functools.lru_cache
def using_b200() -> bool:
    """Returns true if the device is a NVIDIA B200, otherwise returns false."""
    if not torch.cuda.is_available():
        return False
    # compute capability 10.0 or 10.0a is NVIDIA B200
    device_properties = torch.cuda.get_device_properties(torch.cuda.current_device())
    return device_properties.major == 10


def get_num_sms() -> int:
    """Handle experimental carveout if set otherwise return hardware SM count"""
    # TODO we need to properly guard on this global
    if torch.xpu.is_available():
        return get_max_num_sms()
    carveout = torch._C._get_sm_carveout_experimental()
    return get_max_num_sms() - (carveout if carveout is not None else 0)


def get_tma_workspace_arg(
    num_tma_descriptors: int,
    device: torch.device,
    num_programs: Optional[int] = None,
) -> WorkspaceArg:
    """Builds and returns a WorkspaceArg for the device side TMA workspace buffer."""
    from .codegen.common import WorkspaceArg, WorkspaceZeroMode

    if num_programs is None:
        num_programs = get_num_sms()
    zero_mode = WorkspaceZeroMode.from_bool(False)
    size = num_programs * num_tma_descriptors * TMA_DESCRIPTOR_SIZE
    return WorkspaceArg(
        count=size,
        zero_mode=zero_mode,
        device=device,
        outer_name=WorkspaceArg.unique_name(),
    )


def _use_template_for_gpu(
    layout: Layout, allowed_layout_dtypes: list[torch.dtype]
) -> bool:
    if layout.dtype not in allowed_layout_dtypes:
        log.debug(
            "Not using template since dtype %s is not in allowed layout dtypes %s",
            layout.dtype,
            allowed_layout_dtypes,
        )
    return (
        is_gpu(layout.device.type)
        and layout.dtype in allowed_layout_dtypes
        and is_big_gpu(layout.device)
    )


def _use_autotune_backend(backend: str) -> bool:
    return backend.upper() in [
        x.strip() for x in config.max_autotune_gemm_backends.upper().split(",")
    ]


def _use_conv_autotune_backend(backend: str) -> bool:
    return backend.upper() in [
        x.strip() for x in config.max_autotune_conv_backends.upper().split(",")
    ]


def use_triton_template(
    layout: Layout,
    *,
    enable_int32: bool = False,
    enable_float8: bool = False,
    check_max_autotune: bool = True,
) -> bool:
    from .codegen.common import BackendFeature, has_backend_feature

    layout_dtypes = [torch.float16, torch.bfloat16, torch.float32]
    if enable_int32:
        layout_dtypes = [torch.float16, torch.bfloat16, torch.float32, torch.int32]
    if enable_float8:
        layout_dtypes.extend([torch.float8_e4m3fn, torch.float8_e5m2])
    return (
        (
            (
                is_gpu(layout.device.type)
                and _use_template_for_gpu(layout, layout_dtypes)
            )
            or (layout.device.type == "cpu" and layout.dtype in layout_dtypes)
        )
        # some callers handle max-autotune checking externally
        and (config.max_autotune or config.max_autotune_gemm or not check_max_autotune)
        and _use_autotune_backend("TRITON")
        and has_backend_feature(layout.device, BackendFeature.TRITON_TEMPLATES)
    )


def can_use_tma(
    *matrices: IRNode, output_layout: Optional[Layout] = None, add_guards: bool = False
) -> bool:
    """
    Return True iff *all* supplied tensors satisfy the CUDA-12.9 TMA constraints
    that Triton relies on today.
    * https://docs.nvidia.com/cuda/cuda-driver-api/group__CUDA__TENSOR__MEMORY.html

    A tensor is accepted when:
      * 2 ≤ rank ≤ 5
      * dtype ∈ {FP16, BF16, FP8-E4M3FN}
      * Every logical size ≥ 2
      * Base pointer 16-byte aligned
      * All "outer" dims have 16-byte aligned strides
      * The “inner” dim has stride 1 (contiguous)
      * For FP8 tensors, inner dim ≥ 32
    """
    from torch.utils._triton import has_triton_tma_device

    from .virtualized import V

    def _aligned(expr_bytes: Union[int, sympy.Expr]) -> bool:
        return V.graph.sizevars.statically_known_multiple_of(expr_bytes, TMA_ALIGNMENT)

    def _is_tma_compatible_layout(layout: Optional[Layout]) -> bool:
        if layout is None:
            return True
        sizes = layout.size
        strides = layout.stride
        dtype = layout.dtype

        # Verify the output is 16-byte aligned
        if not _aligned(layout.offset):
            return False

        return _is_tma_compatible(sizes, strides, dtype, allow_float32=True)

    def _is_tma_compatible_matrix(m: IRNode) -> bool:
        sizes = m.get_size()
        strides = m.get_stride()
        dtype = m.get_dtype()

        # Base pointer 16-byte aligned
        if m.get_name() in V.graph.unaligned_buffers:
            return False

        return _is_tma_compatible(sizes, strides, dtype, allow_float32=False)

    def _is_tma_compatible(
        sizes: Sequence[sympy.Expr],
        strides: Sequence[_IntLike],
        dtype: torch.dtype,
        allow_float32: bool,
    ) -> bool:
        rank = len(sizes)
        itemsize = dtype.itemsize

        # 2 ≤ rank ≤ 5
        if rank < 2 or rank > 5:
            return False

        # dtype ∈ {FP16, BF16, FP8-E4M3FN}
        if dtype not in (torch.float16, torch.bfloat16, torch.float8_e4m3fn) and (
            not allow_float32 or dtype != torch.float32
        ):
            return False

        if add_guards:
            sizes_i = V.graph.sizevars.guard_int_seq(sizes)
            strides_i = V.graph.sizevars.guard_int_seq(strides)
        else:
            sizes_i = [V.graph.sizevars.symbolic_hint(s) for s in sizes]
            strides_i = [V.graph.sizevars.symbolic_hint(st) for st in strides]

        # Every logical size ≥ 2
        if any(not V.graph.sizevars.statically_known_geq(s, 2) for s in sizes_i):
            return False

        # Find the single contiguous (“inner”) dim
        inner = [
            i
            for i, st in enumerate(strides_i)
            if V.graph.sizevars.statically_known_equals(st, 1)
        ]
        if len(inner) != 1:
            return False
        inner_idx = inner[0]

        # All "outer" dims must have 16-byte aligned strides
        for i, st in enumerate(strides_i):
            if i == inner_idx:
                continue
            if not _aligned(st * itemsize):
                return False

        # Inner dim byte width must still be a multiple of 16 B
        inner_dim = sizes_i[inner_idx]
        if not _aligned(inner_dim * itemsize):
            return False

        # FP8 special case: inner ≥ 32
        if dtype == torch.float8_e4m3fn and not V.graph.sizevars.statically_known_geq(
            inner_dim, 32
        ):
            return False

        return True

    return (
        has_triton_tma_device()
        and all(_is_tma_compatible_matrix(m) for m in matrices)
        and _is_tma_compatible_layout(output_layout)
    )


def use_triton_tma_template(
    *matrices: IRNode, output_layout: Layout, add_guards: bool = False
) -> bool:
    layout = output_layout if config.triton.enable_template_tma_store else None
    return (
        all(len(m.get_size()) == 2 for m in matrices)
        and can_use_tma(*matrices, output_layout=layout, add_guards=add_guards)
        and config.triton.enable_persistent_tma_matmul
    )


def use_triton_blackwell_tma_template(
    *matrices: IRNode, output_layout: Layout, add_guards: bool = False
) -> bool:
    if not use_triton_tma_template(
        *matrices, output_layout=output_layout, add_guards=add_guards
    ):
        return False

    from torch.utils._triton import has_triton_tensor_descriptor_host_tma

    from .codegen.cuda.cuda_env import is_datacenter_blackwell_arch

    # Blackwell template require the tensor descriptor API, not the experimental API.
    return has_triton_tensor_descriptor_host_tma() and is_datacenter_blackwell_arch()


@functools.lru_cache(maxsize=1)
def ensure_cute_available() -> bool:
    """Check if CuTeDSL is importable; cache the result for reuse.

    Call ensure_cute_available.cache_clear() after installing CuTeDSL
    in the same interpreter to retry the import.
    """
    try:
        return importlib.util.find_spec("cutlass.cute") is not None
    except ImportError:
        return False


def use_blackwell_cutedsl_grouped_mm(
    mat_a: Any,
    mat_b: Any,
    layout: Layout,
    a_is_2d: bool,
    b_is_2d: bool,
    offs: Optional[Any],
    bias: Optional[Any],
    scale_result: Optional[Any],
) -> bool:
    """
    Returns True if we can use the blackwell kernel for grouped mm.
    Required conditions:
        1. CuTeDSL backend is enabled
        2. CuTeDSL is available
        3. We are on a blackwell arch
        4. The dtype is bf16
        5. Max autotune or max autotune gemm is enabled
        6. A, B, and the output are 16B aligned
        7. We are not using dynamic shapes
        8. A is 2d
        9. B is 3d
        10. Offsets are provided
        11. Bias and Scale are not provided
    """
    if not ensure_cute_available():
        return False

    if not _use_autotune_backend("CUTEDSL"):
        return False

    from .codegen.cuda.cuda_env import is_datacenter_blackwell_arch

    if not is_gpu(layout.device.type):
        return False

    if not is_datacenter_blackwell_arch():
        return False

    layout_dtypes = [torch.bfloat16]
    if not _use_template_for_gpu(layout, layout_dtypes):
        return False

    if not (config.max_autotune or config.max_autotune_gemm):
        return False

    # Checks for 16B ptr and stride alignment
    if not can_use_tma(mat_a, mat_b, output_layout=layout):
        return False

    if any(is_dynamic(x) for x in [mat_a, mat_b]):
        return False

    if not a_is_2d or b_is_2d:
        return False

    if offs is None:
        return False

    if bias is not None or scale_result is not None:
        return False

    return True


def use_cutlass_template(layout: Layout, m: int, n: int, k: int) -> bool:
    from .virtualized import V

    gemm_size = V.graph.sizevars.size_hint(m * n * k, fallback=-1)
    if gemm_size <= 0 or gemm_size < config.cuda.cutlass_backend_min_gemm_size:
        return False
    from .codegen.cuda.cutlass_utils import try_import_cutlass

    # Do not use cutlass template on ROCm
    if torch.version.hip:
        return False

    # output dtype
    # FP32 not supported: https://github.com/pytorch/pytorch/issues/145952
    layout_dtypes = [torch.float16, torch.bfloat16, torch.int32]
    res = (
        _use_template_for_gpu(layout, layout_dtypes)
        and (config.max_autotune or config.max_autotune_gemm)
        and _use_autotune_backend("CUTLASS")
    )

    if res:
        if not try_import_cutlass():
            log.warning(
                "Failed to import CUTLASS lib. Please check whether "
                "_inductor.config.cuda.cutlass_dir %s is set correctly. "
                "Skipping CUTLASS backend for now.",
                config.cuda.cutlass_dir,
            )
            return False
    return res


def _use_cutlass_for_op(op_name: str) -> bool:
    """Check if CUTLASS should be used for the given operation."""
    enabled_ops = config.cuda.cutlass_enabled_ops.upper()
    if enabled_ops == "ALL":
        return True
    return op_name.upper() in [x.strip() for x in enabled_ops.split(",")]


_IntLike: TypeAlias = Union[int, sympy.Expr]


@functools.cache
def use_decompose_k_choice(
    m: _IntLike, n: _IntLike, k: _IntLike, threshold_multiple: int = 1
) -> bool:
    from torch._inductor.virtualized import V

    decompose_k_threshold = config.triton.decompose_k_threshold * threshold_multiple

    return (
        not torch.version.hip
        and V.graph.sizevars.statically_known_true(
            sympy.And(
                sympy.Ge(k, decompose_k_threshold * m),
                sympy.Ge(k, decompose_k_threshold * n),
            )
        )
        and not V.graph.aot_mode  # TODO: Support AOTI for decomposeK
        and not V.graph.cpp_wrapper
        and config.triton.num_decompose_k_splits > 0
    )


@functools.cache
def use_contiguous(m: _IntLike, n: _IntLike, k: _IntLike) -> bool:
    """
    Check if we should use the contiguous subgraph transform.
    This transform makes the second matrix contiguous before the matmul.
    """
    contiguous_threshold = config.rocm.contiguous_threshold

    # Similar conditions to decompose_k but for contiguous transform
    from torch._inductor.virtualized import V

    return (
        bool(torch.version.hip)  # Only relevant on AMD
        and V.graph.sizevars.statically_known_true(
            sympy.And(
                sympy.Ge(k, contiguous_threshold * m),
                sympy.Ge(k, contiguous_threshold * n),
            )
        )
        and not V.graph.aot_mode
        and not V.graph.cpp_wrapper
    )


@functools.cache
def get_k_splits(m: _IntLike, n: _IntLike, k: _IntLike) -> list[int]:
    # To limit compile time
    k_splits_limit = config.triton.num_decompose_k_splits

    # Hand-tuned
    default_k_splits = [16, 32, 64, 128, 256]
    # If k is a sympy expression, we can't do any splitting
    if isinstance(k, sympy.Expr) and not k.is_number:
        return default_k_splits
    elif k_splits_limit == 0:
        return []

    if (isinstance(m, sympy.Expr) and not m.is_number) or (
        isinstance(n, sympy.Expr) and not n.is_number
    ):
        max_k_split = 256
    else:
        max_k_split = min(k // m, k // n)

    min_k_split = 2
    # Get all divisors of k, k has to be divisible by kPart
    divisors = sympy.divisors(k)

    divisors = [
        divisor
        for divisor in divisors
        if divisor <= max_k_split and divisor >= min_k_split
    ]

    pow_of_2_divisors, mul_of_32_divisors, rest_of_splits = [], [], []

    for d in divisors:
        kPart = k // d

        # Smaller than 128 might not even fit in a single tile, BLOCK_K can be 128
        if kPart < 128:
            continue

        # Power of 2 divisors are best performing, conform to hardware
        if (kPart & kPart - 1) == 0 and kPart >= 128:
            pow_of_2_divisors.append(d)
        # Else check if creates a multiple of 32
        elif kPart % 32 == 0:
            mul_of_32_divisors.append(d)
        # otherwise, take the smallest values
        else:
            rest_of_splits.append(d)

    if config.max_autotune_gemm_search_space == "EXHAUSTIVE":
        return pow_of_2_divisors + mul_of_32_divisors + rest_of_splits

    best_splits = pow_of_2_divisors + mul_of_32_divisors + rest_of_splits
    # Otherwise, conform results to k_splits_limit
    return best_splits[:k_splits_limit]


@functools.cache
def _rocm_native_device_arch_name(device: str) -> str:
    return torch.cuda.get_device_properties(device).gcnArchName


@functools.cache
def try_import_ck_lib() -> tuple[
    Optional[str], Callable[[], list[Any]], Callable[[], list[Any]], type[Any]
]:
    try:
        import ck4inductor  # type: ignore[import]
        from ck4inductor.universal_gemm.gen_instances import (  # type: ignore[import]
            gen_ops_library,
            gen_ops_preselected,
        )
        from ck4inductor.universal_gemm.op import (  # type: ignore[import]
            CKGemmOperation,
        )

        package_dirname = os.path.dirname(ck4inductor.__file__)
    except ImportError:

        def gen_ops_library() -> list[Any]:
            return []

        def gen_ops_preselected() -> list[Any]:
            return []

        class CKGemmOperation:  # type: ignore[no-redef]
            pass

        package_dirname = None
    return package_dirname, gen_ops_library, gen_ops_preselected, CKGemmOperation


def use_ck_template(layout: Layout) -> bool:
    # config knobs check 1
    if not (config.max_autotune or config.max_autotune_gemm):
        return False
    # platform check
    if not torch.version.hip:
        return False
    # tensors must be on GPU
    if layout.device.type != "cuda":
        return False
    # hardware check
    # if config arch list is not specified, get the native arch from the device properties
    native_arch = _rocm_native_device_arch_name(layout.device)
    requested_archs = {k.split(":")[0]: k for k in config.rocm.arch} or {
        native_arch.split(":")[0]: native_arch
    }
    requested_supported_archs = [
        requested_archs[k]
        for k in requested_archs.keys() & config.rocm.ck_supported_arch
    ]
    if not requested_supported_archs:
        return False
    # supported input dtypes
    if layout.dtype not in [torch.float16, torch.bfloat16, torch.float32]:
        return False

    ck_package_dirname, _, _, _ = try_import_ck_lib()

    if not ck_package_dirname:
        log.warning("Please pip install Composable Kernel package")
        return False

    config.rocm.ck_dir = ck_package_dirname

    return True


def use_ck_gemm_template(layout: Layout, m: int, n: int, k: int) -> bool:
    from .virtualized import V

    return (
        _use_autotune_backend("CK")
        and use_ck_template(layout)
        and V.graph.sizevars.size_hint(m * n * k, fallback=-1) > 0
    )


def use_ck_tile_gemm_template(layout: Layout, m: int, n: int, k: int) -> bool:
    from .virtualized import V

    return (
        _use_autotune_backend("CKTILE")
        and use_ck_template(layout)
        and V.graph.sizevars.size_hint(m * n * k, fallback=-1) > 0
    )


def use_ck_conv_template(layout: Layout) -> bool:
    return _use_conv_autotune_backend("CK") and use_ck_template(layout)


def _use_template_for_cpu(layout: Layout) -> bool:
    return (
        config.max_autotune or config.max_autotune_gemm
    ) and layout.device.type == "cpu"


def use_cpp_bmm_template(
    layout: Layout, mat1: Union[ReinterpretView, Buffer], mat2: IRNode
) -> bool:
    from .ir import Layout

    assert isinstance(mat1.layout, Layout)

    # In certain scenarios, such as when the first stride is 0, the entire tensor may not be contiguous.
    # But the 2D matrix within each batch can still be contiguous, allowing us to apply max autotune.
    # So here we specifically check for contiguity within the 2D matrix of each batch.
    mat1_size = mat1.layout.size
    mat1_stride = mat1.layout.stride
    mat1_each_batch_is_contiguous = (
        _use_template_for_cpu(layout)
        and mat1.get_dtype() == torch.float32
        and (len(mat1_size) == 3)
        and (len(mat1_stride) == 3)
        and (mat1_stride[1] == mat1_size[2])
        and (mat1_stride[2] == 1)
    )
    return use_cpp_gemm_template(layout, mat1, mat2, require_constant_mat2=False) and (
        mat1.layout.is_contiguous() or mat1_each_batch_is_contiguous
    )


def use_cpp_gemm_template(
    layout: Layout,
    mat1: IRNode,
    mat2: IRNode,
    mat2_transposed: bool = False,
    require_constant_mat2: bool = True,
    is_woq_int4: bool = False,
    q_group_size: Optional[int] = None,
) -> bool:
    from . import ir
    from .codegen.cpp_micro_gemm import create_micro_gemm
    from .codegen.cpp_utils import get_gemm_template_output_and_compute_dtype
    from .kernel.mm_common import mm_args

    if not _use_template_for_cpu(layout) or not _use_autotune_backend("CPP"):
        return False

    if not config.cpp.weight_prepack:
        return False

    int8_gemm = mat1.get_dtype() in [torch.uint8, torch.int8]
    layout_dtypes = [torch.float32, torch.bfloat16, torch.half, torch.uint8]
    m, n, k, layout, mat1, mat2 = mm_args(
        mat1,
        mat2,
        out_dtype=layout.dtype if int8_gemm else None,
        mat2_transposed=mat2_transposed,
        use_4x2_dim=is_woq_int4,
    )

    # TODO(jgong5): support dynamic shapes for n or k
    if has_free_symbols((n, k)):
        return False

    if isinstance(mat2, ir.BaseView):
        mat2 = mat2.unwrap_view()

    output_dtype, _ = get_gemm_template_output_and_compute_dtype(mat1.get_dtype())
    micro_gemm = create_micro_gemm(
        "micro_gemm",
        m,
        n,
        k,
        input_dtype=mat1.get_dtype(),
        input2_dtype=mat2.get_dtype(),
        output_dtype=output_dtype,
        num_threads=parallel_num_threads(),
        use_ref=not is_woq_int4,
        q_group_size=q_group_size,
    )

    def is_last_dim_stride1(x: IRNode) -> bool:
        x.freeze_layout()
        return x.get_stride()[-1] == 1

    return (
        layout.dtype in layout_dtypes
        and micro_gemm is not None
        and is_last_dim_stride1(mat1)  # TODO(jgong5): support transposed input
        and isinstance(mat2, ir.StorageBox)
        and (mat2.is_module_buffer() or not require_constant_mat2)
    )


def use_aten_gemm_kernels() -> bool:
    return not (
        config.max_autotune or config.max_autotune_gemm
    ) or _use_autotune_backend("ATEN")


class DebugDirManager:
    counter = itertools.count(0)
    prev_debug_name: str

    def __init__(self) -> None:
        self.id = next(DebugDirManager.counter)

    def __enter__(self) -> None:
        self.prev_debug_name = torch._dynamo.config.debug_dir_root
        self.new_name = f"{self.prev_debug_name}_tmp_{self.id}"
        torch._dynamo.config.debug_dir_root = self.new_name

    def __exit__(self, *args: Any) -> None:
        shutil.rmtree(self.new_name)
        torch._dynamo.config.debug_dir_root = self.prev_debug_name


def run_and_get_code(
    fn: Callable[P, _T],
    *args: P.args,
    **kwargs: P.kwargs,
) -> tuple[_T, list[str]]:
    from .graph import GraphLowering

    source_codes: OrderedSet[str] = OrderedSet()

    def save_output_code(code: str) -> None:
        source_codes.add(code)

    with mock.patch.object(GraphLowering, "save_output_code", save_output_code):
        torch._dynamo.reset()
        result = fn(*args, **kwargs)
    return result, list(source_codes)


def run_and_get_kernels(
    fn: Callable[P, _T], *args: P.args, **kwargs: P.kwargs
) -> tuple[_T, list[str]]:
    # pyrefly: ignore [bad-argument-type]
    result, source_codes = run_and_get_code(fn, *args, **kwargs)
    kernels = []
    for code in source_codes:
        kernels.extend(re.findall(r"'''.*?'''", code, re.DOTALL))
    return result, kernels


def run_fw_bw_and_get_code(fn: Callable[..., Any]) -> tuple[Any, list[str]]:
    def run_with_backward() -> Any:
        result = fn()
        result.sum().backward()
        return result

    return run_and_get_code(run_with_backward)


def get_code(fn: Callable[P, _T], *args: P.args, **kwargs: P.kwargs) -> list[str]:
    """Get the inductor-generated code, but skip any actual compilation or running."""
    from .graph import GraphLowering

    source_codes: list[str] = []

    def save_output_code(code: str) -> None:
        source_codes.append(code)

    def patched_compile_to_module(self: GraphLowering) -> Any:
        class DummyModule:
            """This is empty to replace the generated triton module"""

            def __init__(self) -> None:
                pass

            def call(self, *args: Any, **kwargs: Any) -> None:
                # Don't do anything when called
                pass

        wrapper_code, kernel_code = (
            self.codegen_with_cpp_wrapper() if self.cpp_wrapper else self.codegen()
        )
        # Skip all the actual compiling.
        save_output_code(wrapper_code.value)
        if kernel_code:
            save_output_code(kernel_code.value)

        return DummyModule()

    with (
        mock.patch.object(
            GraphLowering, "compile_to_module", patched_compile_to_module
        ),
        mock.patch.object(GraphLowering, "save_output_code", save_output_code),
    ):
        torch._dynamo.reset()
        # Note the return here is None
        _ = fn(*args, **kwargs)

    return source_codes


def get_triton_code(fn: Callable[P, _T], *args: P.args, **kwargs: P.kwargs) -> str:
    # pyrefly: ignore [bad-argument-type]
    source_codes = get_code(fn, *args, **kwargs)
    # Can have two outputs if backwards was eagerly compiled
    assert 1 <= len(source_codes) <= 2, (
        f"expected one or two code outputs got {len(source_codes)}"
    )
    return source_codes[0]


def run_and_get_triton_code(
    fn: Callable[P, _T], *args: P.args, **kwargs: P.kwargs
) -> str:
    # pyrefly: ignore [bad-argument-type]
    _, source_codes = run_and_get_code(fn, *args, **kwargs)
    # Can have two outputs if backwards was eagerly compiled
    assert 1 <= len(source_codes) <= 2, (
        f"expected one or two code outputs got {len(source_codes)}"
    )
    return source_codes[0]


def run_and_get_graph_lowering(
    fn: Callable[P, _T], *args: P.args, **kwargs: P.kwargs
) -> tuple[Any, list[GraphLowering]]:
    from torch._inductor.graph import GraphLowering
    from torch._inductor.output_code import CompiledFxGraph

    real_init = CompiledFxGraph.__init__
    graph_lowerings = []

    def fake_init(*args: Any, **kwargs: Any) -> None:
        real_init(*args, **kwargs)
        graph = args[2]
        assert isinstance(graph, GraphLowering)
        graph_lowerings.append(graph)

    with mock.patch.object(CompiledFxGraph, "__init__", fake_init):
        result = fn(*args, **kwargs)

    return result, graph_lowerings


@contextlib.contextmanager
def override_lowering(
    aten_op: Callable[..., Any], override_fn: Callable[..., Any]
) -> Iterator[None]:
    """
    Override the lowering of aten_op with override_fn.
    The first argument of override_fn is the original lowering fn.
    """
    from torch._inductor import lowering

    orig_fn = lowering.lowerings[aten_op]
    try:
        lowering.lowerings[aten_op] = functools.partial(override_fn, orig_fn)
        yield
    finally:
        lowering.lowerings[aten_op] = orig_fn


def add_scheduler_init_hook(
    pre_fn: Callable[..., Any], post_fn: Optional[Callable[..., Any]] = None
) -> Any:
    """
    Add hook functions to be called at the beginning and end of Scheduler.__init__.
    Used for unit tests.
    """
    from torch._inductor.scheduler import Scheduler

    orig_fn = Scheduler.__init__

    def wrapper(scheduler: Any, nodes: Any) -> Any:
        pre_fn(scheduler, nodes)
        out = orig_fn(scheduler, nodes)
        if post_fn:
            post_fn(scheduler, nodes)
        return out

    return unittest.mock.patch.object(Scheduler, "__init__", wrapper)


def developer_warning(msg: str) -> None:
    """
    Warnings that will be actionable for PyTorch developers, but not
    end users.  Allows us to easily disable them in stable releases but
    keep them on for nightly builds.
    """
    if config.developer_warnings:
        log.warning(msg)
    else:
        log.info(msg)


def get_benchmark_name() -> Optional[str]:
    """
    An experimental API used only when config.benchmark_kernel is true.

    The benchmark name is only available at codegen time. So we can not
    directly call it in benchmark_all_kernels which is run after codegen.

    The function assumes the argument after --only is the benchmark name.
    It works for torchbench.py/hugginface.py/timm_models.py. But for ad-hoc
    scripts, this function may return None.

    There are 2 flavors of --only argument we need handle:
    1. --only model_name
    2. --only=model_name
    """
    try:
        idx = sys.argv.index("--only")
        if (
            idx + 1 < len(sys.argv)
            and len(sys.argv[idx + 1]) > 0
            and sys.argv[idx + 1][0] != "-"
        ):
            return sys.argv[idx + 1]
    except ValueError:
        pass

    for arg in sys.argv:
        if arg.startswith("--only="):
            return arg[len("--only=") :]

    return None


def is_ones(items: Sequence[Any]) -> bool:
    return all(x == 1 for x in items)


def is_zeros(items: Sequence[Any]) -> bool:
    return all(x == 0 for x in items)


def is_cpu_device(inputs: Sequence[torch.Tensor]) -> bool:
    return all(
        item.device == torch.device("cpu")
        for item in inputs
        if isinstance(item, torch.Tensor)
    )


def get_sympy_Expr_dtype(val: sympy.Expr) -> torch.dtype:
    assert isinstance(val, sympy.Expr), (
        "only support sympy.Expr as input to get_sympy_Expr_dtype"
    )
    if val.is_integer:  # type: ignore[attr-defined]
        return torch.int64
    else:
        return torch.float64


@contextlib.contextmanager
def maybe_profile(should_profile: bool, *args: Any, **kwargs: Any) -> Iterator[Any]:
    if should_profile:
        with torch.profiler.profile(*args, **kwargs) as p:
            yield p
    else:
        yield


def parallel_num_threads() -> int:
    threads = config.cpp.threads
    if threads < 1:
        threads = torch.get_num_threads()
    return threads


@functools.cache
def get_backend_num_stages() -> int:
    from .runtime.triton_helpers import get_backend_options

    options = get_backend_options()
    return options.get("num_stages", 2 if torch.version.hip else 3)


@functools.cache
def get_device_tflops(dtype: torch.dtype) -> float:
    """
    We don't want to throw errors in this function. First check to see if the device is in device_info.py,
    then fall back to the inaccurate triton estimation.
    """
    ds_tops = datasheet_tops(dtype, is_tf32=torch.backends.cuda.matmul.allow_tf32)
    if ds_tops is not None:
        return ds_tops

    from triton.testing import get_max_simd_tflops, get_max_tensorcore_tflops

    SM80OrLater = torch.cuda.is_available() and torch.cuda.get_device_capability() >= (
        8,
        0,
    )

    assert dtype in (torch.float16, torch.bfloat16, torch.float32)

    if inspect.signature(get_max_simd_tflops).parameters.get("clock_rate"):
        # Triton API change in https://github.com/triton-lang/triton/pull/2293
        from torch._utils_internal import max_clock_rate

        sm_clock = max_clock_rate()
        if dtype in (torch.float16, torch.bfloat16) and SM80OrLater:
            return get_max_tensorcore_tflops(dtype, sm_clock)

        if torch.backends.cuda.matmul.allow_tf32:
            return get_max_tensorcore_tflops(torch.float32, sm_clock)
        else:
            return get_max_simd_tflops(torch.float32, sm_clock)
    else:
        if dtype in (torch.float16, torch.bfloat16) and SM80OrLater:
            # pyrefly: ignore  # missing-argument
            return get_max_tensorcore_tflops(dtype)

        if torch.backends.cuda.matmul.allow_tf32:
            # pyrefly: ignore  # missing-argument
            return get_max_tensorcore_tflops(torch.float32)
        else:
            # pyrefly: ignore  # missing-argument
            return get_max_simd_tflops(torch.float32)


@functools.cache
def get_gpu_dram_gbps() -> int:
    from triton.testing import get_dram_gbps

    return get_dram_gbps()


def get_gpu_shared_memory() -> int:
    from triton.runtime import driver

    # pyrefly: ignore  # missing-attribute
    return driver.active.utils.get_device_properties(0).get("max_shared_mem", 0)


def is_welford_reduction(reduction_type: str) -> bool:
    return reduction_type.startswith("welford")


def reduction_num_outputs(reduction_type: str) -> int:
    if is_welford_reduction(reduction_type):
        return 3
    elif reduction_type == "online_softmax_reduce":
        return 2
    else:
        return 1


def is_linux() -> bool:
    return platform.system() == "Linux"


def is_windows() -> bool:
    return sys.platform == "win32"


def has_free_symbols(itr: Iterable[Any]) -> bool:
    return any(isinstance(x, sympy.Expr) and not x.is_number for x in itr)


def is_dynamic(*args: Any) -> bool:
    from . import ir

    for t in args:
        if isinstance(
            t, (ir.TensorBox, ir.StorageBox, ir.BaseView, ir.ComputedBuffer, ir.Buffer)
        ):
            if has_free_symbols(t.maybe_get_size() or ()) or has_free_symbols(
                t.maybe_get_stride() or ()
            ):
                return True
        elif not isinstance(t, ir.IRNode):
            continue
        else:
            raise TypeError(f"unexpected type for is_dynamic {type(t)}")

    return False


# Placeholder strings used in triton codegen.
class Placeholder(enum.Enum):
    # The placeholder for the actual name of a triton kernel.
    # e.g. for "def triton_" it would be "triton_"
    KERNEL_NAME = "KERNEL_NAME"

    # The descriptive name of the triton kernel; when unique_kernel_names = False, this
    # placeholder will be replaced with a string with more information.
    DESCRIPTIVE_NAME = "DESCRIPTIVE_NAME"


def pass_execution_and_save(
    func: Callable[..., Any], gm: GraphModule, inp: Sequence[Any], msg: str
) -> None:
    from .pattern_matcher import stable_topological_sort

    with tempfile.NamedTemporaryFile(
        mode="w",
        encoding="utf-8",
    ) as f:
        before_io = io.StringIO()
        after_io = io.StringIO()
        ShapeProp(gm=gm, fake_mode=detect_fake_mode(inp)).propagate(*inp)
        print(f"Before:\n{gm.graph}", file=f)
        print(gm.graph, file=before_io)
        start_time = datetime.now()
        with GraphTransformObserver(gm, msg):
            func(gm.graph)
        time_elapsed = datetime.now() - start_time
        # recompile graph
        stable_topological_sort(gm.graph)
        gm.graph.lint()
        gm.recompile()

        print(f"After:\n{gm.graph}", file=f)
        print(gm.graph, file=after_io)
        t = before_io.getvalue() == after_io.getvalue()
        log.info(
            "%s, save before/after graph to %s, graph before/after are the same = %s, time elapsed = %s",
            msg,
            f.name,
            t,
            time_elapsed,
        )


def is_multi_outputs_template(input_buf: Optional[Union[Buffer, Operation]]) -> bool:
    """
    Check if input buffer is a multi-outputs template buffer
    """
    from . import ir

    return isinstance(input_buf, ir.CppTemplateBuffer) and isinstance(
        input_buf.layout, ir.MultiOutputLayout
    )


def is_output_of_multi_outputs_template(
    input_buf: Optional[Union[Buffer, Operation]],
) -> bool:
    """
    Check if input buffer is a output of multi-outputs template buffer
    """
    from . import ir

    return (
        isinstance(input_buf, ir.MultiOutput)
        and len(input_buf.inputs) == 1
        and is_multi_outputs_template(input_buf.inputs[0])  # type: ignore[arg-type]
    )


def is_collective(
    node: Optional[Union[Node, Operation]],
    op: Optional[torch._ops.OperatorBase] = None,
) -> bool:
    if node is None:
        return False

    from . import ir

    return (
        isinstance(node, ir._CollectiveKernel)
        and not isinstance(node, ir._WaitKernel)
        and (op is None or node.op_overload is op)
    ) or (
        # TODO: this is a temporary solution to ensure that we can identify torchrec's
        # communication ops. But in order to allow better communication and computation
        # overlap, torchrec's communication ops should be not used.
        type(node) is ir.FallbackKernel
        and (
            # NOTE: the `hasattr()` check is to bypass errors such as the following:
            # AttributeError: '_OpNamespace' 'torchrec' object has no attribute 'all_to_all_single'
            (
                hasattr(torch.ops.torchrec, "all_to_all_single")
                and node.op_overload == torch.ops.torchrec.all_to_all_single.default
            )
            or (
                hasattr(torch.ops.torchrec, "all_gather_into_tensor")
                and node.op_overload
                == torch.ops.torchrec.all_gather_into_tensor.default
            )
            or (
                hasattr(torch.ops.torchrec, "reduce_scatter_tensor")
                and node.op_overload == torch.ops.torchrec.reduce_scatter_tensor.default
            )
        )
    )


def is_wait(node: Optional[Union[IRNode, Operation]]) -> bool:
    from . import ir

    return type(node) is ir._WaitKernel


def contains_collective(
    snode: BaseSchedulerNode,
    filter_fn: Optional[Callable[[BaseSchedulerNode], bool]] = None,
) -> bool:
    from torch._inductor.scheduler import GroupedSchedulerNode

    if isinstance(snode, GroupedSchedulerNode):
        return any(contains_collective(x) for x in snode.snodes)

    return is_collective(snode.node) and (filter_fn is None or filter_fn(snode))


def contains_wait(snode: BaseSchedulerNode) -> bool:
    from torch._inductor.scheduler import GroupedSchedulerNode

    if isinstance(snode, GroupedSchedulerNode):
        return any(contains_wait(x) for x in snode.snodes)
    else:
        return is_wait(snode.node)


def is_fallback_op(
    node: Optional[Operation],
    op: Union[torch._ops.OpOverload, Collection[torch._ops.OpOverload]],
) -> bool:
    from . import ir

    if isinstance(op, torch._ops.OpOverload):
        op = [op]
    return isinstance(node, ir.FallbackKernel) and node.op_overload in op


def buf_name_to_fused_snode(
    buf_name: str, name_to_buf: dict[str, Any], name_to_fused_node: dict[str, Any]
) -> Any:
    return name_to_fused_node[name_to_buf[buf_name].defining_op.get_name()]


def find_recursive_deps_of_node(
    snode: BaseSchedulerNode,
    collected_node_set: MutableSet[BaseSchedulerNode],
    name_to_buf: dict[str, SchedulerBuffer],
    name_to_fused_node: dict[str, BaseSchedulerNode],
    criteria_cb: Callable[[Any], bool] = lambda snode: False,
) -> None:
    if criteria_cb(snode):
        return
    collected_node_set.add(snode)
    for dep in snode.unmet_dependencies:
        defining_op_for_dep = buf_name_to_fused_snode(
            dep.name, name_to_buf, name_to_fused_node
        )
        if defining_op_for_dep in collected_node_set:
            continue
        find_recursive_deps_of_node(
            defining_op_for_dep,
            collected_node_set,
            name_to_buf,
            name_to_fused_node,
            criteria_cb=criteria_cb,
        )


def find_recursive_users_of_node(
    snode: BaseSchedulerNode,
    collected_node_set: MutableSet[BaseSchedulerNode],
    name_to_buf: dict[str, SchedulerBuffer],
    name_to_fused_node: dict[str, BaseSchedulerNode],
    criteria_cb: Callable[[Any], bool] = lambda snode: False,
) -> None:
    if criteria_cb(snode):
        return
    collected_node_set.add(snode)
    for o in snode.get_outputs():
        for user in o.users:
            assert user.node is not None
            if user.node.get_name() == "OUTPUT":
                continue
            if user.node.get_name() not in name_to_fused_node:
                continue
            user_op = name_to_fused_node[user.node.get_name()]
            if user_op in collected_node_set:
                continue
            find_recursive_users_of_node(
                user_op,
                collected_node_set,
                name_to_buf,
                name_to_fused_node,
                criteria_cb=criteria_cb,
            )


def num_fw_fixed_arguments(dynamo_gm_num_inputs: int, aot_fw_gm_num_inputs: int) -> int:
    "Computes the number of inputs to the aot fw graph which have fixed addresses (params and buffers)"
    num_rng_seed_offset_inputs = (
        2 if torch._functorch.config.functionalize_rng_ops else 0
    )
    # AOT won't lift any parameters if we're inlining NN Modules
    # however desugaring subclasses will still add arguments
    # resulted in extra fixed inputs https://github.com/pytorch/pytorch/issues/130502
    return aot_fw_gm_num_inputs - dynamo_gm_num_inputs - num_rng_seed_offset_inputs


def count_tangents(fx_g: torch.fx.GraphModule) -> int:
    """
    Infers which inputs are static for a backwards graph
    """

    def is_saved_tensor(x: Node) -> bool:
        return (
            "tangents" not in x.name
            and "bwd_seed" not in x.name
            and "bwd_base_offset" not in x.name
            and "bwd_rng_state" not in x.name
        )

    arg_count = 0
    static_arg_idxs = []
    for n in fx_g.graph.nodes:
        if n.op == "placeholder":
            if is_saved_tensor(n):
                static_arg_idxs.append(arg_count)
            arg_count += 1

    assert static_arg_idxs == list(range(len(static_arg_idxs)))
    return len(static_arg_idxs)


@dataclasses.dataclass
class BoxedBool:
    value: bool

    def __bool__(self) -> bool:
        return self.value

    @staticmethod
    def disable(obj: Any) -> Union[BoxedBool, bool]:
        if isinstance(obj, BoxedBool):
            obj.value = False
            return obj
        return False


@contextlib.contextmanager
def collect_defined_kernels(kernel_list: list[str]) -> Iterator[None]:
    from .codegen.wrapper import PythonWrapperCodegen

    orig_define_kernel = PythonWrapperCodegen.define_kernel

    def define_kernel(
        self: PythonWrapperCodegen,
        kernel_name: str,
        kernel_code: str,
        metadata: Optional[str] = None,
        gpu: bool = True,
        cpp_definition: Optional[str] = None,
    ) -> Any:
        kernel_list.append(kernel_code)
        return orig_define_kernel(
            self, kernel_name, kernel_code, metadata, gpu, cpp_definition
        )

    with mock.patch.object(PythonWrapperCodegen, "define_kernel", define_kernel):
        yield


def get_cloned_parameter_buffer_name(name: str) -> str:
    return name + "__original__"


def is_gpu(device: Optional[str]) -> bool:
    return device in GPU_TYPES


def device_need_guard(device: str) -> bool:
    return device != "mps" and is_gpu(device)  # TODO: MPS does not expose streams now


def needs_fallback_due_to_atomic_add_limitations(dtype: torch.dtype) -> bool:
    if dtype == torch.bfloat16 and torch.cuda.is_available():
        return torch.cuda.get_device_capability() < (9, 0)
    else:
        return dtype in (torch.int64, torch.bool)


def use_scatter_fallback(
    op_overload: torch._ops.OpOverload,
    reduction_type: Optional[str],
    self_dtype: torch.dtype,
    src_dtype: torch.dtype,
    src_device_type: str,
    src_is_tensor: bool,
) -> bool:
    if (
        op_overload.overloadpacket
        in (torch.ops.aten.scatter_reduce_, torch.ops.aten.scatter_reduce)
        and reduction_type is None
    ):
        return False

    reduce_ty = (
        "add" if op_overload.overloadpacket == torch.ops.aten.scatter_ else "sum"
    )

    return (
        reduction_type not in (None, reduce_ty)
        or (
            src_is_tensor
            and is_gpu(src_device_type)
            and needs_fallback_due_to_atomic_add_limitations(src_dtype)
        )
        or (
            op_overload.overloadpacket == torch.ops.aten.scatter_reduce_
            and reduction_type == "sum"
            and src_is_tensor
            and src_device_type == "cpu"
            and config.cpp.fallback_scatter_reduce_sum
            and (config.cpp.dynamic_threads or parallel_num_threads() != 1)
        )
        or (reduction_type == reduce_ty and self_dtype in (torch.bool, torch.int64))
        or torch.are_deterministic_algorithms_enabled()
    )


def dump_node_schedule(node_schedule: Sequence[BaseSchedulerNode]) -> None:
    """
    An API that can be used in pdb to dump a node_schedule.
    Right mainly dump the read/write dependencies but can add more as needed.
    """
    from torch._inductor.codegen.simd import DisableReduction, EnableReduction
    from torch._inductor.scheduler import SchedulerNode

    print(f"Node schedule with {len(node_schedule)} nodes")
    for idx, node in enumerate(node_schedule):
        print(f" {idx:3}:")
        if node is EnableReduction:
            print("enable reduction")
        elif node is DisableReduction:
            print("disable reduction")
        elif isinstance(node, SchedulerNode):
            is_red = node.is_reduction()
            print(f"{'red' if is_red else 'pw'} scheduler node")
            if is_red:
                assert node.node is not None
                print(f"original reduction hint {node.node.data.reduction_hint}")  # type: ignore[attr-defined]
            print("ReadDep:")
            for dep in node.read_writes.reads:
                print(dep)
            print("WriteDep:")
            for dep in node.read_writes.writes:
                print(dep)
        else:
            raise RuntimeError(f"Unrecognized node type: {type(node)}")


def tensor_is_aligned(tensor: torch.Tensor) -> bool:
    # See Note: [Input Alignment handling in Inductor]
    # Right now, we don't try to guard on the alignment of the storage offset.
    # When this comment was written, non-symbolic storage_offsets are not guarded on
    # but symbolic storage_offsets are. For consistency, we suppress guard creation
    # upon performing this check: that ensures that we don't add recompiles when we
    # add this logic.
    from torch.fx.experimental.symbolic_shapes import statically_known_true

    return statically_known_true(
        (tensor.storage_offset() * get_dtype_size(tensor.dtype)) % GPU_ALIGN_BYTES == 0
    )


def should_assume_input_aligned(example_input: torch.Tensor) -> bool:
    # See Note: [Input Alignment handling in Inductor]

    # right now, we only care about alignment for cuda tensors.
    if not is_gpu(example_input.device.type):
        return False
    return config.assume_aligned_inputs or tensor_is_aligned(example_input)


def maybe_get_suppress_shape_guards_ctx() -> contextlib.AbstractContextManager[None]:
    # Try to get TracingContext.try_get().fake_mode.shape_env.suppress_guards()
    # If it's not available, return a nullcontext.

    # If we're dealing with cudagraphs, we might not have a tracing_context
    tracing_context = torch._guards.TracingContext.try_get()
    if not tracing_context:
        return contextlib.nullcontext()

    # In standalone inductor compile mode, we might not have a shape_env attached to the fake mode
    if not tracing_context.fake_mode or not tracing_context.fake_mode.shape_env:
        return contextlib.nullcontext()
    shape_env = tracing_context.fake_mode.shape_env
    return shape_env.suppress_guards()


def run_and_get_cpp_code(
    fn: Callable[P, _T], *args: P.args, **kwargs: P.kwargs
) -> tuple[_T, str]:
    # We use the patch context manager instead of using it as a decorator.
    # In this way, we can ensure that the attribute is patched and unpatched correctly
    # even if this run_and_get_cpp_code function is called multiple times.
    with unittest.mock.patch.object(config, "debug", True):
        torch._dynamo.reset()
        import io
        import logging

        log_capture_string = io.StringIO()
        ch = logging.StreamHandler(log_capture_string)
        from torch._inductor.codecache import output_code_log

        output_code_log.addHandler(ch)
        prev_level = output_code_log.level
        output_code_log.setLevel(logging.DEBUG)
        result = fn(*args, **kwargs)
        s = log_capture_string.getvalue()
        output_code_log.setLevel(prev_level)
        output_code_log.removeHandler(ch)
    return result, s


def shape_env_from_inputs(inputs: Sequence[InputType]) -> Optional[ShapeEnv]:
    fake_mode = detect_fake_mode(inputs)

    # TODO(voz): It would be nice to enable this assert, but there are lots of tests that
    # pass in real inputs for now.
    # if len(inputs) > 0:
    # assert fake_mode is not None, breakpoint()

    if fake_mode is not None:
        return fake_mode.shape_env

    # When there are no tensor inputs, get shape_env from the first SymInt.
    for input in inputs:
        if isinstance(input, torch.SymInt):
            return input.node.shape_env

        # Check tensor sizes and strides for SymInt values
        if isinstance(input, torch.Tensor):
            for size in input.size():
                if isinstance(size, torch.SymInt):
                    return size.node.shape_env
            for stride in input.stride():
                if isinstance(stride, torch.SymInt):
                    return stride.node.shape_env

    # TODO(voz): Should we always have one anyway?
    return None


def align_inputs_from_check_idxs(
    model: Callable[[list[InputType]], _T],
    inputs_to_check: Sequence[int],
    mutated_input_idxs: OrderedSet[int],
) -> Callable[[list[InputType]], _T]:
    if len(inputs_to_check) == 0:
        return model

    def run(new_inputs: list[InputType]) -> Any:
        old_tensors, new_tensors = copy_misaligned_inputs(
            new_inputs, inputs_to_check, mutated_input_idxs
        )
        out = model(new_inputs)

        # If a mutated tensor was cloned to be aligned, we need to reflect back the mutation to the
        # original tensor.
        if len(old_tensors):
            torch._foreach_copy_(old_tensors, new_tensors)

        return out

    return run


def clone_preserve_strides(x: torch.Tensor) -> torch.Tensor:
    if 0 in x.size():
        # Short-circuits if the shape has no elements
        needed_size = 0
    else:
        needed_size = (
            sum((shape - 1) * stride for shape, stride in zip(x.size(), x.stride())) + 1
        )
    buffer = torch.as_strided(x, (needed_size,), (1,)).clone()
    return torch.as_strided(buffer, x.size(), x.stride())


def copy_misaligned_inputs(
    new_inputs: list[InputType],
    check_inputs_idxs: Sequence[int],
    return_pair_idxs: Optional[OrderedSet[int]] = None,
) -> tuple[list[torch.Tensor], list[torch.Tensor]]:
    """
    Clones misaligned tensors which we inferred were aligned. Returns a tuple of [old_tensors], [new_tensors] for every
    cloned tensor which is in `return_pair_idxs`.
    """

    old_tensors: list[torch.Tensor] = []
    new_tensors: list[torch.Tensor] = []

    # hoist above loop because this is on the hot path
    ret_pair_defined = return_pair_idxs is not None
    for i in check_inputs_idxs:
        _inp = new_inputs[i]
        assert isinstance(_inp, torch.Tensor), (
            f"Expected tensors only, but got: {type(_inp)}"
        )
        if _inp.data_ptr() % ALIGNMENT:
            new_inputs[i] = clone_preserve_strides(_inp)

            if ret_pair_defined and i in return_pair_idxs:  # type: ignore[operator]
                old_tensors.append(_inp)
                new_tensors.append(new_inputs[i])  # type: ignore[arg-type]

    return old_tensors, new_tensors


def remove_unaligned_input_idxs(
    inputs: Sequence[InputType],
    static_input_idxs: Sequence[int],
) -> Sequence[int]:
    """
    We require all inputs to be aligned, so introduce a copy for any
    that aren't.
    """
    aligned_static_input_idxs = []
    for idx in static_input_idxs:
        input = inputs[idx]
        if isinstance(input, torch.Tensor) and (input.data_ptr() % ALIGNMENT) == 0:
            aligned_static_input_idxs.append(idx)
    if len(aligned_static_input_idxs) != len(static_input_idxs):
        return aligned_static_input_idxs
    return static_input_idxs


def expr_fits_within_32bit(e: sympy.Expr) -> bool:
    from .virtualized import V

    int_max = torch.iinfo(torch.int32).max
    size_hint = V.graph.sizevars.size_hint
    has_hint = V.graph.sizevars.shape_env.has_hint

    if config.assume_32bit_indexing:
        V.graph.sizevars.check_leq(e, int_max)  # type: ignore[arg-type]
        return True

    # Allow for unhinted e as long as we can still statically prove
    # (e.g., via ValueRanges) that it is still in bounds
    if V.graph.sizevars.statically_known_true(e <= int_max):
        return True

    # AOTI doesn't guard on < 2**32, so checking hints isn't a viable option,
    # in case the hinted value is < 2**32, but the allowed range is larger.
    # However, to prevent possible perf regressions on pre-existing AOTI models
    # which don't set an upper bound on the valid range, we'll skip the check.
    # To recap:
    # - If using AOTI:
    #   - If allowed range has no upper bound, then check the hint to determine
    #       whether this fits in int32
    #   - If allowed range does have an upper bound, then obey the upper bound
    #       (check whether upper bound < int32_max) without checking the hint.

    if V.aot_compilation:
        # check whether value has an upper bound (1e20 is > INT64_MAX, assume
        # there is no upper bound if it can be larger than 1e20)
        if V.graph.sizevars.statically_known_true(e < 1e20):
            # if so, then assume int_max < upper bound < inf
            # so this could potentially have int64 values
            return False

    # Otherwise, the hint MUST exist and be in range
    return has_hint(e) and size_hint(e) <= int_max


def set_tracing_context_output_strides(
    example_inputs: Sequence[Any], compiled_graph: CompiledFxGraph
) -> None:
    # Return the output strides to the caller via TracingContext
    context = torch._guards.TracingContext.try_get()
    if context is not None and context.output_strides is not None:
        assert len(context.output_strides) == 0
        shape_env = shape_env_from_inputs(example_inputs)
        assert compiled_graph.output_strides is not None
        for exprs in compiled_graph.output_strides:
            if exprs is None:
                context.output_strides.append(None)
            else:
                fakify_first_call = False
                if ctx := torch._guards.TracingContext.try_get():
                    fakify_first_call = ctx.fakify_first_call

                def map_expr(e: Any) -> Union[float, int, SymInt, SymFloat, SymBool]:
                    if shape_env is None:
                        return int(e)
                    if fakify_first_call:
                        return shape_env.deserialize_symexpr(e)
                    return shape_env.evaluate_symexpr(e)

                context.output_strides.append(
                    tuple(map_expr(e) for e in exprs)  # type: ignore[misc]
                )


def should_use_remote_fx_graph_cache() -> bool:
    if config.fx_graph_remote_cache is not None:
        return config.fx_graph_remote_cache
    if not config.is_fbcode():
        return False

    if torch._utils_internal.is_fb_unit_test():
        return False

    try:
        from torch._inductor.fb.remote_cache import REMOTE_CACHE_VERSION
    except ModuleNotFoundError:
        return False

    return REMOTE_CACHE_VERSION >= torch._utils_internal.justknobs_getval_int(
        "pytorch/remote_cache:fx_graph_memcache_version"
    )


def normalize_name(name: str) -> str:
    return re.sub(r"[^a-zA-Z0-9_]", "_", name)


# correct cases where Triton types names don't match PyTorch
_triton_type_mapping = {
    "tl.bool": "tl.int1",
    "tl.float8_e4m3fn": "tl.float8e4nv",
    "tl.float8_e5m2": "tl.float8e5",
    "tl.float8_e4m3fnuz": "tl.float8e4b8",
    "tl.float8_e5m2fnuz": "tl.float8e5b16",
    # TODO: remove when support is added in triton
    # https://github.com/triton-lang/triton/issues/6054
    "tl.float8_e8m0fnu": "tl.uint8",
    "tl.float4_e2m1fn_x2": "tl.uint8",
}
_torch_triton_mapping = {v: k for k, v in _triton_type_mapping.items()}


_triton_type_re = re.compile(r"^.*[.]")


def triton_type(dtype: torch.dtype) -> str:
    """Convert torch.dtype to triton type"""
    triton_type_name = _triton_type_re.sub("tl.", str(dtype))
    return _triton_type_mapping.get(triton_type_name, triton_type_name)


def triton_type_to_torch(dtype: str) -> torch.dtype:
    adjusted_type = _torch_triton_mapping.get(dtype, dtype)
    type_name = adjusted_type.replace("tl.", "")
    out_dtype = getattr(torch, type_name)
    assert isinstance(out_dtype, torch.dtype)
    return out_dtype


def is_same_tensor(data: torch.Tensor, value: torch.Tensor) -> bool:
    return (
        not data.is_mkldnn
        and data.size() == value.size()
        and data.stride() == value.stride()
        and data.dtype == value.dtype
        and data.device == value.device
        and data.untyped_storage().data_ptr() == value.untyped_storage().data_ptr()
        and data.storage_offset() == value.storage_offset()
    )


def is_same_mkldnn_tensor(data: torch.Tensor, value: torch.Tensor) -> bool:
    return (
        data.is_mkldnn
        and data.size() == value.size()
        and data.dtype == value.dtype
        and data.device == value.device
        and torch.ops.mkldnn.data_ptr(data) == torch.ops.mkldnn.data_ptr(value)
    )


@functools.cache
def boolean_ops() -> tuple[str, ...]:
    return (
        "isinf",
        "isnan",
        "logical_not",
        "logical_and",
        "signbit",
        "and_",
        "le",
        "lt",
        "ge",
        "gt",
        "eq",
        "ne",
        "or_",  # TODO should remove this op
        "xor",
    )


@dataclasses.dataclass
class OpDtypeRule:
    type_promotion_kind: ELEMENTWISE_TYPE_PROMOTION_KIND
    override_return_dtype: Optional[torch.dtype]


op_dtype_propagation_rules: dict[str, OpDtypeRule] = {}


def register_op_dtype_propagation_rules(
    name: str,
    type_promotion_kind: ELEMENTWISE_TYPE_PROMOTION_KIND,
    override_return_dtype: Optional[torch.dtype],
) -> None:
    op_dtype_propagation_rules[name] = OpDtypeRule(
        type_promotion_kind, override_return_dtype
    )


op_requires_libdevice_fp64: OrderedSet[str] = OrderedSet()


def register_op_requires_libdevice_fp64(name: str) -> None:
    op_requires_libdevice_fp64.add(name)


def get_current_backend(device_type: Optional[str] = None) -> str:
    from torch._inductor.virtualized import V

    if not device_type:
        device_type = V.graph.get_current_device_or_throw().type
    if device_type == "cpu":
        return config.cpu_backend
    elif device_type == "mps":
        return "mps"
    elif device_type == "xpu":
        return config.xpu_backend
    else:
        return config.cuda_backend


def upcast_compute_type(dtype: torch.dtype) -> torch.dtype:
    """Maybe upcast [b]float16 to float32"""
    if (
        dtype in (torch.float16, torch.bfloat16)
        and config.triton.codegen_upcast_to_fp32
        and get_current_backend() == "triton"
    ):
        return torch.float32
    return dtype


KeyType = TypeVar("KeyType")
ValType = TypeVar("ValType")


class ScopedDict(MutableMapping[KeyType, ValType]):
    """
    A dictionary-like object that allows for scoped updates. It maintains
    an original dictionary and a set of new items that can override
    the original items within the scope.  The original dictionary is
    unmodified.
    """

    def __init__(self, original_dict: Mapping[KeyType, ValType]):
        self.original_dict = original_dict
        self.new_items: dict[KeyType, ValType] = {}

    def __getitem__(self, key: KeyType) -> ValType:
        if key in self.new_items:
            return self.new_items[key]
        return self.original_dict[key]

    def __setitem__(self, key: KeyType, value: ValType) -> None:
        self.new_items[key] = value

    def __contains__(self, key: object) -> bool:
        return key in self.new_items or key in self.original_dict

    def get(self, key: KeyType, default: Optional[ValType] = None) -> Optional[ValType]:  # type: ignore[override]
        if key in self.new_items:
            return self.new_items[key]
        return self.original_dict.get(key, default)

    def __len__(self) -> int:
        n = len(self.original_dict)
        for k in self.new_items:
            if k not in self.original_dict:
                n += 1
        return n

    def __iter__(self) -> Iterator[KeyType]:
        yield from self.original_dict
        for k in self.new_items:
            if k not in self.original_dict:
                yield k

    def __bool__(self) -> bool:
        return bool(self.original_dict or self.new_items)

    def __delitem__(self, key: KeyType) -> None:
        raise NotImplementedError


@dataclass_transform(frozen_default=True)
def ir_dataclass(cls: Optional[type[Any]] = None, /, *, frozen: bool = True) -> Any:
    def wrap(cls: _T) -> _T:
        return dataclasses.dataclass(cls, kw_only=True, frozen=frozen)  # type: ignore[call-overload]

    if cls is None:
        return wrap
    return wrap(cls)


def get_donated_idxs() -> Optional[list[int]]:
    tracing_context = torch._guards.TracingContext.try_get()
    if tracing_context is not None and tracing_context.fw_metadata:
        return tracing_context.fw_metadata.bw_donated_idxs
    return None


class TritonAttrsDescriptorVersion(enum.Enum):
    V0_NO_TRITON = 0
    V1_COMPILER = 1  # triton.compiler.compiler.AttrsDescriptor
    V2_BACKENDS = 2  # triton.backends.compiler.AttrsDescriptor
    V3_BACKENDS_TUPLE = (
        3  # triton.backends.compiler.AttrsDescriptor, but with tuple support
    )
    V4_DICT = 4  # a raw dict


@functools.cache
def get_triton_attrs_descriptor_version() -> TritonAttrsDescriptorVersion:
    if importlib.util.find_spec("triton") is None:
        return TritonAttrsDescriptorVersion.V0_NO_TRITON

    import triton.backends.compiler
    import triton.compiler.compiler

    if hasattr(triton.backends.compiler, "AttrsDescriptor"):
        # Triton 3.2.0
        # AttrsDescriptor was moved from triton.compiler.compiler to triton.backends.compiler.
        # AttrsDescriptor and its serialization format were also changed.

        # TODO: implement V3_BACKENDS_TUPLE
        # On Dec 9, 2024, tuple support (triton #5220) was implemented and breaks handling.
        # We don't have a way to detect this (and haven't implemented this version)
        return TritonAttrsDescriptorVersion.V2_BACKENDS
    elif hasattr(triton.compiler.compiler, "AttrsDescriptor"):
        # Triton 3.0.0
        return TritonAttrsDescriptorVersion.V1_COMPILER
    else:
        # After Jan 1, 2025
        # AttrsDescriptor was removed and replaced with a raw dict.
        return TritonAttrsDescriptorVersion.V4_DICT


def triton_version_uses_attrs_dict() -> bool:
    return get_triton_attrs_descriptor_version() == TritonAttrsDescriptorVersion.V4_DICT


def is_cudagraph_unsafe_op(node: Operation) -> bool:
    """
    Returns True if the node is an op that is not cudagraphable.
    Usually only custom ops have this tag.
    """
    from . import ir

    if not isinstance(node, ir.FallbackKernel):
        return False

    if (
        isinstance(node.op_overload, torch._ops.OpOverload)
        and torch._C.Tag.cudagraph_unsafe in node.op_overload.tags  # type: ignore[attr-defined]
    ):
        return True

    return False


def get_ld_library_path() -> str:
    path = os.environ.get("LD_LIBRARY_PATH", "")
    if config.is_fbcode():
        from libfb.py.parutil import get_runtime_path

        runtime_path = get_runtime_path()
        if runtime_path:
            lib_path = os.path.join(runtime_path, "runtime", "lib")
            path = os.pathsep.join([lib_path, path]) if path else lib_path

    return path


def is_codegen_graph_partition_subgraph(wrapper: PythonWrapperCodegen) -> bool:
    from torch._inductor.codegen.wrapper import SubgraphPythonWrapperCodegen

    return (
        isinstance(wrapper, SubgraphPythonWrapperCodegen)
        and wrapper.partition_signatures is not None
    )


def is_using_cudagraph_partition() -> bool:
    return (
        torch._inductor.config.triton.cudagraphs
        or _unstable_customized_partition_wrapper.wrapper is not None
    ) and torch._inductor.config.graph_partition


def dtype_from_size(size: int) -> torch.dtype:
    from .virtualized import V

    if V.graph.sizevars.statically_known_lt(
        size, 2**31
    ) and V.graph.sizevars.statically_known_geq(size, -(2**31)):
        return torch.int32
    else:
        return torch.int64


SUPPORTED_MKLDNN_DEVICES = ("cpu", "xpu")


def is_mkldnn_bf16_supported(device_type: str) -> bool:
    """
    Returns True if the device supports MKL-DNN BF16.
    """
    if device_type == "cpu":
        return torch.ops.mkldnn._is_mkldnn_bf16_supported()
    elif "xpu" in device_type:
        # match "xpu", "xpu:0", "xpu:1", etc.
        return True
    return False


def is_mkldnn_fp16_supported(device_type: str) -> bool:
    """
    Returns True if the device supports MKL-DNN FP16.
    """
    if device_type == "cpu":
        return torch.ops.mkldnn._is_mkldnn_fp16_supported()
    elif "xpu" in device_type:
        # match "xpu", "xpu:0", "xpu:1", etc.
        return True
    return False


def tabulate_2d(elements: Sequence[Sequence[T]], headers: Sequence[T]) -> str:
    widths = [len(str(e)) for e in headers]
    for row in elements:
        assert len(row) == len(headers)
        for i, e in enumerate(row):
            widths[i] = max(widths[i], len(str(e)))
    lines = []
    lines.append("|".join(f" {h:{w}} " for h, w in zip(headers, widths)))
    #              widths          whitespace      horizontal separators
    total_width = sum(widths) + (len(widths) * 2) + (len(widths) - 1)
    lines.append("-" * total_width)
    for row in elements:
        lines.append("|".join(f" {e:{w}} " for e, w in zip(row, widths)))
    return "\n".join(lines)


def zip_dicts(
    dict1: Mapping[KeyType, ValType],
    dict2: Mapping[KeyType, ValType],
    d1_default: ValType | None = None,
    d2_default: ValType | None = None,
) -> Generator[tuple[KeyType, ValType | None, ValType | None], None, None]:
    """
    Zip two dictionaries together, replacing missing keys with default values.

    Args:
        dict1 (dict): The first dictionary.
        dict2 (dict): The second dictionary.
        d1_default (Any): the default value for the first dictionary
        d2_default (Any): the default value for the second dictionary

    Yields:
        tuple: A tuple containing the key, the value from dict1 (or d1_default if missing),
               and the value from dict2 (or d2_default if missing).
    """
    # Find the union of all keys
    all_keys = OrderedSet(dict1.keys()) | OrderedSet(dict2.keys())

    # Iterate over all keys
    for key in all_keys:
        # Get the values from both dictionaries, or default if missing
        value1 = dict1.get(key)
        value2 = dict2.get(key)

        yield (
            key,
            value1 if value1 is not None else d1_default,
            value2 if value2 is not None else d2_default,
        )


def maybe_aoti_standalone_config(config_patches: dict[str, Any]) -> dict[str, Any]:
    """
    Ensures the configuration is internally consistent for standalone AOTInductor.

    If `aot_inductor_mode.compile_standalone` is set to True in the provided
    `config_patches` (or falls back to the global config), this function ensures
    that the following configs are also enabled:
        - `aot_inductor.package_cpp_only`

    Args:
        config_patches (dict[str, Any]): A dictionary of user-provided config
            overrides for AOTInductor compilation.

    Returns:
        dict[str, Any]: The possibly-updated `config_patches` dictionary.
    """

    def patch_config(
        config_patches: dict[str, Any], config_name: str, config_value: Any
    ) -> None:
        value = config_patches.get(config_name, getattr(config, config_name))
        if value is None:
            config_patches[config_name] = config_value
        elif not value and value != config_value:
            raise RuntimeError(
                f"Invalid config: {config_name}={config_value} when aot_inductor_mode.compile_standalone is True."
            )

    def force_patch_config(
        config_patches: dict[str, Any], config_name: str, config_value: Any
    ) -> None:
        value = config_patches.get(config_name, getattr(config, config_name))
        if value != config_value:
            log.warning(
                "Overriding: %s=%s when aot_inductor_mode.compile_standalone is True.",
                config_name,
                config_value,
            )
        config_patches[config_name] = config_value

    compile_standalone = config_patches.get(
        "aot_inductor_mode.compile_standalone",
        config.aot_inductor_mode.compile_standalone,
    )
    # Make a copy of the config_patches to avoid modifying the original dictionary, needed for testing
    config_patches = config_patches.copy()
    if compile_standalone:
        # Standlaone AOTInductor means only generate cpp project for building a standalone binary
        patch_config(config_patches, "aot_inductor.package_cpp_only", True)
        # Standlaone AOTInductor needs to embed the kernel code in the binary
        patch_config(config_patches, "aot_inductor.embed_kernel_binary", True)
        # Default to use multi-arch kernel codegen for non-rocm GPU
        patch_config(
            config_patches, "aot_inductor.emit_multi_arch_kernel", not torch.version.hip
        )
        patch_config(
            config_patches, "aot_inductor.model_name_for_generated_files", "aoti_model"
        )
        # TODO: change these two configs to default to None and use patch_config
        force_patch_config(
            config_patches,
            "aot_inductor.link_libtorch",
            config.test_configs.use_libtorch,
        )
        force_patch_config(config_patches, "aot_inductor.dynamic_linkage", False)

    cross_target_platform = config_patches.get(
        "aot_inductor.cross_target_platform",
        config.aot_inductor.cross_target_platform,
    )

    package_constants_in_so = config_patches.get(
        "aot_inductor.package_constants_in_so",
        config.aot_inductor.package_constants_in_so,
    )

    if cross_target_platform == "windows" and package_constants_in_so:
        raise RuntimeError(
            "config.aot_inductor.package_constants_in_so is not supported for windows cross-compilation. "
            "Please use config.aot_inductor.package_constants_on_disk_format = binary_blob."
        )

    return config_patches


def determine_aoti_mmap_flags(consts_size: int) -> tuple[bool, bool]:
    """
    Decide whether we should mmap weights, and whether to store the weights with .so.

    If force_mmap_weights or package_constants_on_disk_format == "binary_blob" configs are set, respect the config.

    Returns tuple (use_external_weights, use_mmap_weights).
    """

    if (
        config.aot_inductor.force_mmap_weights
        and config.aot_inductor.package_constants_on_disk_format == "binary_blob"
    ):
        raise RuntimeError(
            "config.aot_inductor.package_constants_on_disk_format = binary_blob and "
            "config.aot_inductor.force_mmap_weights cannot both be True."
        )

    if config.aot_inductor.force_mmap_weights:
        if config.aot_inductor.cross_target_platform == "windows":
            raise RuntimeError(
                "when cross_target_platform is windows, use_mmap_weights should not be true."
            )
        use_mmap_weights = True
        use_external_weights = False
        return use_external_weights, use_mmap_weights

    if config.aot_inductor.package_constants_on_disk_format == "binary_blob":
        use_external_weights = True
        use_mmap_weights = False
        return use_external_weights, use_mmap_weights

    if consts_size <= 2_000_000_000:
        return False, False

    use_external_weights = False
    use_mmap_weights = not config.is_fbcode()

    return use_external_weights, use_mmap_weights


def is_valid_aoti_model_name() -> bool:
    """
    Validates if a model name is suitable for use in code generation.

    """
    from torch._inductor import config

    model_name = config.aot_inductor.model_name_for_generated_files

    if model_name is None:
        return True

    if not isinstance(model_name, str):
        raise ValueError("Invalid AOTI model name: Model name must be a string")

    if model_name == "":
        return True

    # Can only contain alphanumeric characters and underscores
    if not re.match(r"^[a-zA-Z_][a-zA-Z0-9_]*$", model_name):
        raise ValueError(
            "Invalid AOTI model name: Model name can only contain letters, numbers, and underscores"
        )

    return True


def get_free_symbols(x: IterateExprs, unbacked_only: bool) -> OrderedSet[sympy.Symbol]:
    if unbacked_only:
        return free_unbacked_symbols(x)
    else:
        return free_symbols(x)


def maybe_log_cudagraph_partition(
    msg: str,
    prefix: Optional[str] = "cudagraph partition due to ",
    node: Optional[BaseSchedulerNode] = None,
) -> None:
    """
    Cudagraph partition may lead to extra memory overhead so we
    log partition reasons to help users understand the overhead.
    """
    if not config.triton.cudagraphs:
        return

    warning_msg = f"{prefix}{msg}"

    if (
        node
        and (ir_node := node.node)
        and (fx_node := ir_node.get_origin_node())
        and (stack_trace := fx_node.meta.get("stack_trace", None))
    ):
        warning_msg = f"{warning_msg}. Found from : \n {stack_trace}"

    perf_hint_log.warning(warning_msg)


def python_subprocess_env() -> dict[str, str]:
    """
    Get a base environment for running Python subprocesses.
    """

    env = {
        # Inherit the environment of the current process.
        **os.environ,
        # Set the PYTHONPATH so the subprocess can find torch.
        "PYTHONPATH": os.environ.get(
            "TORCH_CUSTOM_PYTHONPATH", os.pathsep.join(sys.path)
        ),
    }

    # Set PYTHONHOME for internal builds, to account for builds that bundle the
    # runtime.  Otherwise they will use the libraries and headers from the
    # platform runtime instead.
    #
    # This can't be done for external builds.  The process can be run from a
    # venv and that won't include Python headers.  The process needs to be able
    # to search for and find the platform runtime.
    if config.is_fbcode():
        env["PYTHONHOME"] = sysconfig.get_path("data")

    return env


@dataclasses.dataclass(frozen=True)
class CUDAGraphWrapperMetadata:
    """
    Metadata for Customized CUDAGraphWrapper.

    Currently assumes there is 1 dynamo graph and will extend to
    multiple graphs in the future.
    """

    # The number of partitions that are cudagraphable.
    num_partitions: int

    # Index of the current partition.
    partition_index: int


PartitionFnType = Callable[..., Any]
CUDAGraphWrapperType = Callable[
    [PartitionFnType, CUDAGraphWrapperMetadata], PartitionFnType
]


# only incremented by user call of mark_step_begin
class CUDAGraphWrapper:
    wrapper: Optional[CUDAGraphWrapperType] = None


# A customized partition wrappers from users. Interface should be:
#
# def wrapper(fn: PartitionFnType, metadata: CUDAGraphWrapperMetadata) -> PartitionFnType
#
# Inductor generates N wrapper functions for N partition functions, and mechanically wrap
# each partition fn with the generated wrapper function. Users need to handle all details
# such as static inputs, dynamic shapes, etc.
# Users could customize the wrapper based on the metadata. One example is to have special
# handle for the first and last wrapper function.
#
# Warning: This API is unstable and may change in the future.
_unstable_customized_partition_wrapper = CUDAGraphWrapper()


def set_customized_partition_wrappers(wrapper: CUDAGraphWrapperType) -> None:
    _unstable_customized_partition_wrapper.wrapper = wrapper


def snode_args_kwargs(snode: BaseSchedulerNode) -> tuple[list[Any], dict[str, Any]]:
    args = snode.node.inputs  # type: ignore[union-attr]
    args = snode.node.fill_non_provided_args(  # type: ignore[union-attr]
        [*args, *snode.node.constant_args],  # type: ignore[union-attr]
        snode.node.kwargs,  # type: ignore[union-attr]
    )
    kwargs = snode.node.kwargs  # type: ignore[union-attr]
    flat_args, flat_args_pytree_spec = pytree.tree_flatten((args, kwargs))

    def _is_tensor_ir(x) -> bool:  # type: ignore[no-untyped-def]
        return isinstance(x, torch._inductor.ir.IRNode) and not isinstance(
            x, torch._inductor.ir.GeneratorState
        )

    flat_args = [
        torch._inductor.ir.ir_node_to_tensor(a, guard_shape=False)
        if _is_tensor_ir(a)
        else a
        for a in flat_args
    ]

    def _tensor(size, dtype, device) -> torch.Tensor:  # type: ignore[no-untyped-def]
        return torch.empty(size, dtype=dtype, device=device)

    def to_real_tensor(e: Any) -> Any:
        if not isinstance(e, torch.Tensor):
            return e
        out = _tensor(e.size(), e.dtype, e.device)
        return out

    flat_args = [to_real_tensor(a) for a in flat_args]
    args, kwargs = pytree.tree_unflatten(flat_args, flat_args_pytree_spec)
    return args, kwargs


def is_nonfreeable_buffers(dep: Dep) -> bool:
    from .virtualized import V

    dep_name = dep.name
    # Subgraphs have a prefix for the name, cleanup the prefix
    # before checking for known strings.
    if V.graph.name:
        dep_name = dep_name.removeprefix(V.graph.name + "_")
    return dep_name.startswith(
        ("primals_", "arg", "fwd_rng_state", "bwd_rng_state", "tangents")
    )


# Make sure to also include your jinja templates within torch_package_data in setup.py, or this function won't be able to find them
def load_template(name: str, template_dir: Path) -> str:
    """Load a template file and return its content."""
    with open(template_dir / f"{name}.py.jinja") as f:
        return f.read()


def should_fallback_by_default(node: torch.fx.Node) -> bool:
    """Decide whether fallback for a node. This is only used in inductor lite mode."""
    target = node.target

    assert isinstance(
        target, (torch._ops.OpOverload, torch._ops.HigherOrderOperator)
    ), f"Expected OpOverload or HigherOrderOperator, but found {type(target)}"

    if not config.fallback_by_default:
        return False

    # some ops need special handle due to dynamic shapes. we can avoid
    # fallback if they do not impact numerics.
    skip_fallback_due_to_dynamic_shape = OrderedSet(
        [
            torch.ops.aten._assert_scalar.default,
            torch.ops.aten.lift_fresh_copy.default,
        ]
    )

    if target in skip_fallback_due_to_dynamic_shape:
        return False

    # Most hops have registered lowering. We should follow the lowering and not fallback.
    # However, in rare cases, hops may not register lowering, such as
    # torch.ops.higher_order.triton_kernel_wrapper_functional. We should fallback for
    # these hops.
    fallback_hops = OrderedSet(
        [torch.ops.higher_order.triton_kernel_wrapper_functional]
    )

    if isinstance(target, torch._ops.HigherOrderOperator):
        return target in fallback_hops

    return not _needs_inductor_compile(node)
